Have a language expert improve your writing

Run a free plagiarism check in 10 minutes, generate accurate citations for free.

  • Knowledge Base
  • Starting the research process
  • How to Write a Research Proposal | Examples & Templates

How to Write a Research Proposal | Examples & Templates

Published on October 12, 2022 by Shona McCombes and Tegan George. Revised on November 21, 2023.

Structure of a research proposal

A research proposal describes what you will investigate, why it’s important, and how you will conduct your research.

The format of a research proposal varies between fields, but most proposals will contain at least these elements:

Introduction

Literature review.

  • Research design

Reference list

While the sections may vary, the overall objective is always the same. A research proposal serves as a blueprint and guide for your research plan, helping you get organized and feel confident in the path forward you choose to take.

Table of contents

Research proposal purpose, research proposal examples, research design and methods, contribution to knowledge, research schedule, other interesting articles, frequently asked questions about research proposals.

Academics often have to write research proposals to get funding for their projects. As a student, you might have to write a research proposal as part of a grad school application , or prior to starting your thesis or dissertation .

In addition to helping you figure out what your research can look like, a proposal can also serve to demonstrate why your project is worth pursuing to a funder, educational institution, or supervisor.

Research proposal length

The length of a research proposal can vary quite a bit. A bachelor’s or master’s thesis proposal can be just a few pages, while proposals for PhD dissertations or research funding are usually much longer and more detailed. Your supervisor can help you determine the best length for your work.

One trick to get started is to think of your proposal’s structure as a shorter version of your thesis or dissertation , only without the results , conclusion and discussion sections.

Download our research proposal template

Receive feedback on language, structure, and formatting

Professional editors proofread and edit your paper by focusing on:

  • Academic style
  • Vague sentences
  • Style consistency

See an example

data analysis research proposal example

Writing a research proposal can be quite challenging, but a good starting point could be to look at some examples. We’ve included a few for you below.

  • Example research proposal #1: “A Conceptual Framework for Scheduling Constraint Management”
  • Example research proposal #2: “Medical Students as Mediators of Change in Tobacco Use”

Like your dissertation or thesis, the proposal will usually have a title page that includes:

  • The proposed title of your project
  • Your supervisor’s name
  • Your institution and department

The first part of your proposal is the initial pitch for your project. Make sure it succinctly explains what you want to do and why.

Your introduction should:

  • Introduce your topic
  • Give necessary background and context
  • Outline your  problem statement  and research questions

To guide your introduction , include information about:

  • Who could have an interest in the topic (e.g., scientists, policymakers)
  • How much is already known about the topic
  • What is missing from this current knowledge
  • What new insights your research will contribute
  • Why you believe this research is worth doing

As you get started, it’s important to demonstrate that you’re familiar with the most important research on your topic. A strong literature review  shows your reader that your project has a solid foundation in existing knowledge or theory. It also shows that you’re not simply repeating what other people have already done or said, but rather using existing research as a jumping-off point for your own.

In this section, share exactly how your project will contribute to ongoing conversations in the field by:

  • Comparing and contrasting the main theories, methods, and debates
  • Examining the strengths and weaknesses of different approaches
  • Explaining how will you build on, challenge, or synthesize prior scholarship

Following the literature review, restate your main  objectives . This brings the focus back to your own project. Next, your research design or methodology section will describe your overall approach, and the practical steps you will take to answer your research questions.

To finish your proposal on a strong note, explore the potential implications of your research for your field. Emphasize again what you aim to contribute and why it matters.

For example, your results might have implications for:

  • Improving best practices
  • Informing policymaking decisions
  • Strengthening a theory or model
  • Challenging popular or scientific beliefs
  • Creating a basis for future research

Last but not least, your research proposal must include correct citations for every source you have used, compiled in a reference list . To create citations quickly and easily, you can use our free APA citation generator .

Some institutions or funders require a detailed timeline of the project, asking you to forecast what you will do at each stage and how long it may take. While not always required, be sure to check the requirements of your project.

Here’s an example schedule to help you get started. You can also download a template at the button below.

Download our research schedule template

If you are applying for research funding, chances are you will have to include a detailed budget. This shows your estimates of how much each part of your project will cost.

Make sure to check what type of costs the funding body will agree to cover. For each item, include:

  • Cost : exactly how much money do you need?
  • Justification : why is this cost necessary to complete the research?
  • Source : how did you calculate the amount?

To determine your budget, think about:

  • Travel costs : do you need to go somewhere to collect your data? How will you get there, and how much time will you need? What will you do there (e.g., interviews, archival research)?
  • Materials : do you need access to any tools or technologies?
  • Help : do you need to hire any research assistants for the project? What will they do, and how much will you pay them?

If you want to know more about the research process , methodology , research bias , or statistics , make sure to check out some of our other articles with explanations and examples.

Methodology

  • Sampling methods
  • Simple random sampling
  • Stratified sampling
  • Cluster sampling
  • Likert scales
  • Reproducibility

 Statistics

  • Null hypothesis
  • Statistical power
  • Probability distribution
  • Effect size
  • Poisson distribution

Research bias

  • Optimism bias
  • Cognitive bias
  • Implicit bias
  • Hawthorne effect
  • Anchoring bias
  • Explicit bias

Once you’ve decided on your research objectives , you need to explain them in your paper, at the end of your problem statement .

Keep your research objectives clear and concise, and use appropriate verbs to accurately convey the work that you will carry out for each one.

I will compare …

A research aim is a broad statement indicating the general purpose of your research project. It should appear in your introduction at the end of your problem statement , before your research objectives.

Research objectives are more specific than your research aim. They indicate the specific ways you’ll address the overarching aim.

A PhD, which is short for philosophiae doctor (doctor of philosophy in Latin), is the highest university degree that can be obtained. In a PhD, students spend 3–5 years writing a dissertation , which aims to make a significant, original contribution to current knowledge.

A PhD is intended to prepare students for a career as a researcher, whether that be in academia, the public sector, or the private sector.

A master’s is a 1- or 2-year graduate degree that can prepare you for a variety of careers.

All master’s involve graduate-level coursework. Some are research-intensive and intend to prepare students for further study in a PhD; these usually require their students to write a master’s thesis . Others focus on professional training for a specific career.

Critical thinking refers to the ability to evaluate information and to be aware of biases or assumptions, including your own.

Like information literacy , it involves evaluating arguments, identifying and solving problems in an objective and systematic way, and clearly communicating your ideas.

The best way to remember the difference between a research plan and a research proposal is that they have fundamentally different audiences. A research plan helps you, the researcher, organize your thoughts. On the other hand, a dissertation proposal or research proposal aims to convince others (e.g., a supervisor, a funding body, or a dissertation committee) that your research topic is relevant and worthy of being conducted.

Cite this Scribbr article

If you want to cite this source, you can copy and paste the citation or click the “Cite this Scribbr article” button to automatically add the citation to our free Citation Generator.

McCombes, S. & George, T. (2023, November 21). How to Write a Research Proposal | Examples & Templates. Scribbr. Retrieved April 15, 2024, from https://www.scribbr.com/research-process/research-proposal/

Is this article helpful?

Shona McCombes

Shona McCombes

Other students also liked, how to write a problem statement | guide & examples, writing strong research questions | criteria & examples, how to write a literature review | guide, examples, & templates, "i thought ai proofreading was useless but..".

I've been using Scribbr for years now and I know it's a service that won't disappoint. It does a good job spotting mistakes”

CRENC Learn

How to Create a Data Analysis Plan: A Detailed Guide

by Barche Blaise | Aug 12, 2020 | Writing

how to create a data analysis plan

If a good research question equates to a story then, a roadmap will be very vita l for good storytelling. We advise every student/researcher to personally write his/her data analysis plan before seeking any advice. In this blog article, we will explore how to create a data analysis plan: the content and structure.

This data analysis plan serves as a roadmap to how data collected will be organised and analysed. It includes the following aspects:

  • Clearly states the research objectives and hypothesis
  • Identifies the dataset to be used
  • Inclusion and exclusion criteria
  • Clearly states the research variables
  • States statistical test hypotheses and the software for statistical analysis
  • Creating shell tables

1. Stating research question(s), objectives and hypotheses:

All research objectives or goals must be clearly stated. They must be Specific, Measurable, Attainable, Realistic and Time-bound (SMART). Hypotheses are theories obtained from personal experience or previous literature and they lay a foundation for the statistical methods that will be applied to extrapolate results to the entire population.

2. The dataset:

The dataset that will be used for statistical analysis must be described and important aspects of the dataset outlined. These include; owner of the dataset, how to get access to the dataset, how the dataset was checked for quality control and in what program is the dataset stored (Excel, Epi Info, SQL, Microsoft access etc.).

3. The inclusion and exclusion criteria :

They guide the aspects of the dataset that will be used for data analysis. These criteria will also guide the choice of variables included in the main analysis.

4. Variables:

Every variable collected in the study should be clearly stated. They should be presented based on the level of measurement (ordinal/nominal or ratio/interval levels), or the role the variable plays in the study (independent/predictors or dependent/outcome variables). The variable types should also be outlined.  The variable type in conjunction with the research hypothesis forms the basis for selecting the appropriate statistical tests for inferential statistics. A good data analysis plan should summarize the variables as demonstrated in Figure 1 below.

Presentation of variables in a data analysis plan

5. Statistical software

There are tons of software packages for data analysis, some common examples are SPSS, Epi Info, SAS, STATA, Microsoft Excel. Include the version number,  year of release and author/manufacturer. Beginners have the tendency to try different software and finally not master any. It is rather good to select one and master it because almost all statistical software have the same performance for basic and the majority of advance analysis needed for a student thesis. This is what we recommend to all our students at CRENC before they begin writing their results section .

6. Selecting the appropriate statistical method to test hypotheses

Depending on the research question, hypothesis and type of variable, several statistical methods can be used to answer the research question appropriately. This aspect of the data analysis plan outlines clearly why each statistical method will be used to test hypotheses. The level of statistical significance (p-value) which is often but not always <0.05 should also be written.  Presented in figures 2a and 2b are decision trees for some common statistical tests based on the variable type and research question

A good analysis plan should clearly describe how missing data will be analysed.

How to choose a statistical method to determine association between variables

7. Creating shell tables

Data analysis involves three levels of analysis; univariable, bivariable and multivariable analysis with increasing order of complexity. Shell tables should be created in anticipation for the results that will be obtained from these different levels of analysis. Read our blog article on how to present tables and figures for more details. Suppose you carry out a study to investigate the prevalence and associated factors of a certain disease “X” in a population, then the shell tables can be represented as in Tables 1, Table 2 and Table 3 below.

Table 1: Example of a shell table from univariate analysis

Example of a shell table from univariate analysis

Table 2: Example of a shell table from bivariate analysis

Example of a shell table from bivariate analysis

Table 3: Example of a shell table from multivariate analysis

Example of a shell table from multivariate analysis

aOR = adjusted odds ratio

Now that you have learned how to create a data analysis plan, these are the takeaway points. It should clearly state the:

  • Research question, objectives, and hypotheses
  • Dataset to be used
  • Variable types and their role
  • Statistical software and statistical methods
  • Shell tables for univariate, bivariate and multivariate analysis

Further readings

Creating a Data Analysis Plan: What to Consider When Choosing Statistics for a Study https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4552232/pdf/cjhp-68-311.pdf

Creating an Analysis Plan: https://www.cdc.gov/globalhealth/healthprotection/fetp/training_modules/9/creating-analysis-plan_pw_final_09242013.pdf

Data Analysis Plan: https://www.statisticssolutions.com/dissertation-consulting-services/data-analysis-plan-2/

Photo created by freepik – www.freepik.com

Barche Blaise

Dr Barche is a physician and holds a Masters in Public Health. He is a senior fellow at CRENC with interests in Data Science and Data Analysis.

Post Navigation

16 comments.

Ewane Edwin, MD

Thanks. Quite informative.

James Tony

Educative write-up. Thanks.

Mabou Gabriel

Easy to understand. Thanks Dr

Amabo Miranda N.

Very explicit Dr. Thanks

Dongmo Roosvelt, MD

I will always remember how you help me conceptualize and understand data science in a simple way. I can only hope that someday I’ll be in a position to repay you, my dear friend.

Menda Blondelle

Plan d’analyse

Marc Lionel Ngamani

This is interesting, Thanks

Nkai

Very understandable and informative. Thank you..

Ndzeshang

love the figures.

Selemani C Ngwira

Nice, and informative

MONICA NAYEBARE

This is so much educative and good for beginners, I would love to recommend that you create and share a video because some people are able to grasp when there is an instructor. Lots of love

Kwasseu

Thank you Doctor very helpful.

Mbapah L. Tasha

Educative and clearly written. Thanks

Philomena Balera

Well said doctor,thank you.But when do you present in tables ,bars,pie chart etc?

Rasheda

Very informative guide!

Submit a Comment Cancel Reply

Your email address will not be published. Required fields are marked *

Notify me of follow-up comments by email.

Notify me of new posts by email.

Submit Comment

  Receive updates on new courses and blog posts

Never Miss a Thing!

Never Miss a Thing!

Subscribe to our mailing list to receive the latest news and updates on our webinars, articles and courses.

You have Successfully Subscribed!

SlideTeam

Researched by Consultants from Top-Tier Management Companies

Banner Image

Powerpoint Templates

Icon Bundle

Kpi Dashboard

Professional

Business Plans

Swot Analysis

Gantt Chart

Business Proposal

Marketing Plan

Project Management

Business Case

Business Model

Cyber Security

Business PPT

Digital Marketing

Digital Transformation

Human Resources

Product Management

Artificial Intelligence

Company Profile

Acknowledgement PPT

PPT Presentation

Reports Brochures

One Page Pitch

Interview PPT

All Categories

Top 10 Statistical Analysis Research Proposal Templates with Samples and Examples

Top 10 Statistical Analysis Research Proposal Templates with Samples and Examples

Densil Nazimudeen

author-user

In the dynamic realm of scientific inquiry, statistical analysis is the bedrock upon which informed decisions are built. A well-defined statistical analysis research proposal delineates the scope of work and serves as a roadmap for acquiring and extracting invaluable insights from data. As data classification and decision mapping weave intricately into this process, the significance of a meticulously structured research proposal cannot be overstated.

In the pursuit of effective communication and streamlined comprehension, the integration of visual aids is paramount. This is precisely where SlideTeam’s Top 10 Statistical Analysis Research Proposal Templates come into play. These PPT Themes, carefully curated to cater to diverse needs, bridge the gap between complexity and clarity.

Here is an engaging blog post about the Top 7 Market Analysis Report Templates with Examples and Samples. Click here to read.

These PPT Designs encompass various elements, harmonizing an enterprise analytics solution with a user-friendly design. As organizations seek cooperation to surmount intricate statistical analysis cost structure s, these PPT Templates offer an unparalleled advantage. Each PPT Template encapsulates the essence of data-driven research, infusing creativity into the otherwise technical aspects. These PPT Slides facilitate a flawless narrative flow with strategically embedded keywords like acquisition and extraction , data classification , and decision mapping .  

Since each PPT Slide was painstakingly created to be 100% editable, they represent the height of usability and creativity. The content can be changed to suit your needs and effectively deliver your message. To produce memorable and significant presentations, these PPT Themes purposefully lure viewers in with appealing, content-ready layouts, attention-grabbing imagery, and stunning typography.

Let's take a look at our PPT Templates.

Template 1: Project Context and Objectives of Statistical Analysis of Research Findings Template

With the help of this PPT Preset, you can demonstrate the project context and objective of data analytics, along with the details of the benefits and advantages of choosing their company’s services. It helps you present a comprehensive overview of how data analytics aligns with the project's goals. It also highlights the unique selling points of the company in the field of data analytics. Furthermore, this PPT Theme provides a structured framework for discussing the company's expertise and capabilities in data analytics.

Project Context and Objectives of Statistical Analysis of Research Findings

Download Now!

Template 2: Scope of Work for Statistical Analysis of Research Findings Template

With the help of this PPT Layout, you can showcase the scope of work for research data analysis projects. It highlights specific focus areas, such as data acquisition and extraction , examination, and cleaning. This PPT Theme provides a visual roadmap for the research data analysis journey. It also illustrates the methodologies and techniques that will be employed in each stage of analysis. Furthermore, this PPT Theme enables clients or stakeholders to understand the depth and breadth of the analysis process. 

Scope of Work for Statistical Analysis of Research Findings

Template 3: Plan of Action for Statistical Analysis of Research Findings Template

Use this PPT Slide to deliver a structured, organized action plan for research data analysis projects. It helps you to demonstrate the different phases of the data analysis journey: data collection, data pre-processing, data analysis, and data classification . This PPT Theme highlights the significance of data pre-processing in preparing raw data for analysis. It communicates the strategic importance of data classification in deriving meaningful insights. Also, it enables stakeholders to comprehend the project's timeline and resource allocation for each phase. 

Plan of Action for Statistical Analysis of Research Findings

Template 4: Timeline for Statistical Analysis of Research Findings Template

With the help of this PPT Theme, you can showcase the timeline for a research data analysis project that focuses on business issue understanding, data understanding, data preparation, etc. It offers stakeholders a comprehensive view of the project's progress and projected duration. It demonstrates the company's expertise in managing the various stages of research data analysis. It also facilitates project planning and resource allocation by separating the process into distinct phases. Also, this PPT Preset presents a cohesive and logical flow of how the project will unfold, from issue identification to actionable insights. 

Timeline for Statistical Analysis of Research Findings

Template 5: Key Deliverables for Statistical Analysis of Research Findings Template

With the help of this PPT Template, you can demonstrate the critical deliverables for research data analysis, which cover problem/ decision mapping , analysis and design, implementation, ongoing, etc. It helps you showcase the company's expertise in managing the various phases of research data analysis. It facilitates client understanding by showcasing tangible and intangible outcomes at each stage. It enhances project planning and stakeholder alignment by clearly defining what each phase produces. Also, this PPT Theme reflects the company's commitment to delivering comprehensive and impactful solutions through a structured approach. 

Key Deliverables for Statistical Analysis of Research Findings

Template 6: Statistical Analysis Cost Structure 1/2 Template

This PPT Slide focuses on the data analytics cost structure, covering phases like architecture design, hardware and software configuration, system development and integration, etc. It also covers costs incurred by each team member. This PPT Slide emphasizes the financial commitment required for system development and integration. It also demonstrates a comprehensive view of the project's financial allocation across various phases. It facilitates informed decision-making by visually representing the financial considerations at each stage. Furthermore, it enables stakeholders to understand the project's distribution of resources and budget. 

Statistical Analysis Cost Structure

Template 7: Statistical Analysis Cost Structure 2/2 Template

With the help of this PPT Layout, you can demonstrate the data analytics cost structure, which covers various services offered like research design, questionnaire design, sample size identification, etc., along with their corresponding prices. This PPT Theme helps you demonstrate the financial commitment required for each distinct service in the data analytics journey. It enables clients or stakeholders to understand the financial distribution across various services. Furthermore, it facilitates decision-making by visually representing the cost breakdown of each service. 

Statistical Analysis Cost Structure

Template 8: Statistical Analysis Team Cost Structure Template

With the help of this PPT Theme, you can showcase the packages offered by call centre service providers, such as essential, business plus, enterprise, and premium. It illustrates the hourly cost rates for each specialist role in the package context. This PPT Theme enables clients to make informed decisions by understanding the offerings and costs of each package. It highlights specialists' specific skills and expertise at different hourly cost rates. Furthermore, it enhances transparency by showcasing the hourly cost rates of each specialist role. 

Statistical Analysis Team Cost Structure

Template 9: Why Our Statistical Analysis Company Template

This PPT Layout effectively communicates why customers choose the company for their data analytics needs using a visually impactful template. It highlights the company's strengths, such as the amount of data, cleanliness, complexity, etc. This PPT Theme enables clients to understand the strategic advantages of choosing the company for their data analytics requirements. Furthermore, it facilitates a comprehensive overview of the company's unique selling points in the data analytics domain. 

Why Our Statistical Analysis Company

Template 10: About Our Statistical Analysis of Research Findings Template

This PPT Preset articulates why customers select the company for their data analytics needs. It introduces the company and its identity, encompassing aspects like who we are, vision, and mission. This PPT Theme presents the company's mission statement, outlining its purpose and commitment to clients. It offers clients an understanding of the company's ethos and long-term goals. Furthermore, effective communication helps reflect the company's commitment to transparency and client understanding. 

About Our Statistical Analysis of Research Findings

Embark on an exploration of these statistical analysis research proposal templates today!

The curated collection of the Top 10 Statistical Analysis Research Proposal Templates offers a valuable resource for researchers and scholars. These templates, real-world samples, and examples provide a solid foundation for crafting compelling research proposals. By harnessing these tools, researchers can streamline proposal creation, ensuring clarity, structure, and methodological rigor. Our research proposal presentation templates cater to diverse research avenues, whether delving into quantitative data, experimental design, or survey analysis. Embracing these templates saves time and enhances the quality of proposals, fostering effective communication of research intentions. As we conclude, this repository is a pivotal asset, empowering researchers to embark on their academic pursuits confidently.

Subscribe today and enjoy a vast library of premium PPT Slides with our flexible monthly, semi-annual, and annual plans!

Unlock insights with a compelling blog that explores the Top 10 Research Project Proposal Templates with Samples and Examples. Click here to learn more.

Are you seeking a valuable resource? Check out our blog on the Top 10 Templates for Qualitative and Quantitative Data Analysis in Research Proposals. Click here to get started.

FAQs on Statistical Analysis Research Proposal

What is statistical analysis, and what are its types.

Statistical analysis involves interpreting data to uncover patterns, relationships, and insights. Its types include descriptive (summarizing data), inferential (drawing conclusions from samples), and exploratory (finding new trends). Regression analyzes dependencies, ANOVA compares groups, and hypothesis testing validates assumptions. Each type aids decision-making across various fields.

What is the purpose of statistical analysis in research?

Statistical analysis in research reveals patterns, relationships, and trends within data. It validates hypotheses, aids in drawing accurate conclusions, and supports evidence-based decision-making. Providing objective insights enhances the reliability and credibility of research findings across diverse fields.

Related posts:

  • Top 5 Business Services Proposal Examples with Templates and Samples
  • Top 10 Product Design Proposal Templates with Examples and Samples
  • Must-Have Proposal for Contract Work Templates with Samples and Examples
  • Top 10 Education Grant Proposal Samples with Templates and Examples

Liked this blog? Please recommend us

data analysis research proposal example

Top 10 Crisis Management Plan Templates with Samples and Examples

Top 10 Project Status Report Templates with Samples and Examples

Top 10 Project Status Report Templates with Samples and Examples

This form is protected by reCAPTCHA - the Google Privacy Policy and Terms of Service apply.

digital_revolution_powerpoint_presentation_slides_Slide01

Digital revolution powerpoint presentation slides

sales_funnel_results_presentation_layouts_Slide01

Sales funnel results presentation layouts

3d_men_joinning_circular_jigsaw_puzzles_ppt_graphics_icons_Slide01

3d men joinning circular jigsaw puzzles ppt graphics icons

Business Strategic Planning Template For Organizations Powerpoint Presentation Slides

Business Strategic Planning Template For Organizations Powerpoint Presentation Slides

Future plan powerpoint template slide

Future plan powerpoint template slide

project_management_team_powerpoint_presentation_slides_Slide01

Project Management Team Powerpoint Presentation Slides

Brand marketing powerpoint presentation slides

Brand marketing powerpoint presentation slides

Launching a new service powerpoint presentation with slides go to market

Launching a new service powerpoint presentation with slides go to market

agenda_powerpoint_slide_show_Slide01

Agenda powerpoint slide show

Four key metrics donut chart with percentage

Four key metrics donut chart with percentage

Engineering and technology ppt inspiration example introduction continuous process improvement

Engineering and technology ppt inspiration example introduction continuous process improvement

Meet our team representing in circular format

Meet our team representing in circular format

Google Reviews

Banner

  • RIT Libraries
  • Data Analytics Resources
  • Writing a Research Proposal
  • Electronic Books
  • Print Books
  • Data Science: Journals
  • More Journals, Websites
  • Alerts, IDS Express
  • Readings on Data
  • Sources with Data
  • Google Scholar Library Links
  • Zotero-Citation Management Tool
  • Writing a Literature Review
  • ProQuest Research Companion
  • Thesis Submission Instructions
  • Associations

Writing a Rsearch Proposal

A  research proposal  describes what you will investigate, why it’s important, and how you will conduct your research.  Your paper should include the topic, research question and hypothesis, methods, predictions, and results (if not actual, then projected).

Research Proposal Aims

The format of a research proposal varies between fields, but most proposals will contain at least these elements:

  • Introduction

Literature review

  • Research design

Reference list

While the sections may vary, the overall objective is always the same. A research proposal serves as a blueprint and guide for your research plan, helping you get organized and feel confident in the path forward you choose to take.

Proposal Format

The proposal will usually have a  title page  that includes:

  • The proposed title of your project
  • Your supervisor’s name
  • Your institution and department

Introduction The first part of your proposal is the initial pitch for your project. Make sure it succinctly explains what you want to do and why.. Your introduction should:

  • Introduce your  topic
  • Give necessary background and context
  • Outline your  problem statement  and  research questions To guide your  introduction , include information about:  
  • Who could have an interest in the topic (e.g., scientists, policymakers)
  • How much is already known about the topic
  • What is missing from this current knowledge
  • What new insights will your research contribute
  • Why you believe this research is worth doing

As you get started, it’s important to demonstrate that you’re familiar with the most important research on your topic. A strong  literature review  shows your reader that your project has a solid foundation in existing knowledge or theory. It also shows that you’re not simply repeating what other people have done or said, but rather using existing research as a jumping-off point for your own.

In this section, share exactly how your project will contribute to ongoing conversations in the field by:

  • Comparing and contrasting the main theories, methods, and debates
  • Examining the strengths and weaknesses of different approaches
  • Explaining how will you build on, challenge, or  synthesize  prior scholarship

Research design and methods

Following the literature review, restate your main  objectives . This brings the focus back to your project. Next, your  research design  or  methodology  section will describe your overall approach, and the practical steps you will take to answer your research questions. Write up your projected, if not actual, results.

Contribution to knowledge

To finish your proposal on a strong note, explore the potential implications of your research for your field. Emphasize again what you aim to contribute and why it matters.

For example, your results might have implications for:

  • Improving best practices
  • Informing policymaking decisions
  • Strengthening a theory or model
  • Challenging popular or scientific beliefs
  • Creating a basis for future research

Lastly, your research proposal must include correct  citations  for every source you have used, compiled in a  reference list . To create citations quickly and easily, you can use free APA citation generators like BibGuru. Databases have a citation button you can click on to see your citation. Sometimes you have to re-format it as the citations may have mistakes. 

  • << Previous: ProQuest Research Companion
  • Next: DIR >>

Edit this Guide

Log into Dashboard

Use of RIT resources is reserved for current RIT students, faculty and staff for academic and teaching purposes only. Please contact your librarian with any questions.

Facebook icon

Help is Available

data analysis research proposal example

Email a Librarian

A librarian is available by e-mail at [email protected]

Meet with a Librarian

Call reference desk voicemail.

A librarian is available by phone at (585) 475-2563 or on Skype at llll

Or, call (585) 475-2563 to leave a voicemail with the reference desk during normal business hours .

Chat with a Librarian

Data analytics resources infoguide url.

https://infoguides.rit.edu/DA

Use the box below to email yourself a link to this guide

  • Skip to main content
  • Skip to primary sidebar
  • Skip to footer
  • QuestionPro

survey software icon

  • Solutions Industries Gaming Automotive Sports and events Education Government Travel & Hospitality Financial Services Healthcare Cannabis Technology Use Case NPS+ Communities Audience Contactless surveys Mobile LivePolls Member Experience GDPR Positive People Science 360 Feedback Surveys
  • Resources Blog eBooks Survey Templates Case Studies Training Help center

data analysis research proposal example

Home Market Research

Data Analysis in Research: Types & Methods

data-analysis-in-research

Content Index

Why analyze data in research?

Types of data in research, finding patterns in the qualitative data, methods used for data analysis in qualitative research, preparing data for analysis, methods used for data analysis in quantitative research, considerations in research data analysis, what is data analysis in research.

Definition of research in data analysis: According to LeCompte and Schensul, research data analysis is a process used by researchers to reduce data to a story and interpret it to derive insights. The data analysis process helps reduce a large chunk of data into smaller fragments, which makes sense. 

Three essential things occur during the data analysis process — the first is data organization . Summarization and categorization together contribute to becoming the second known method used for data reduction. It helps find patterns and themes in the data for easy identification and linking. The third and last way is data analysis – researchers do it in both top-down and bottom-up fashion.

LEARN ABOUT: Research Process Steps

On the other hand, Marshall and Rossman describe data analysis as a messy, ambiguous, and time-consuming but creative and fascinating process through which a mass of collected data is brought to order, structure and meaning.

We can say that “the data analysis and data interpretation is a process representing the application of deductive and inductive logic to the research and data analysis.”

Researchers rely heavily on data as they have a story to tell or research problems to solve. It starts with a question, and data is nothing but an answer to that question. But, what if there is no question to ask? Well! It is possible to explore data even without a problem – we call it ‘Data Mining’, which often reveals some interesting patterns within the data that are worth exploring.

Irrelevant to the type of data researchers explore, their mission and audiences’ vision guide them to find the patterns to shape the story they want to tell. One of the essential things expected from researchers while analyzing data is to stay open and remain unbiased toward unexpected patterns, expressions, and results. Remember, sometimes, data analysis tells the most unforeseen yet exciting stories that were not expected when initiating data analysis. Therefore, rely on the data you have at hand and enjoy the journey of exploratory research. 

Create a Free Account

Every kind of data has a rare quality of describing things after assigning a specific value to it. For analysis, you need to organize these values, processed and presented in a given context, to make it useful. Data can be in different forms; here are the primary data types.

  • Qualitative data: When the data presented has words and descriptions, then we call it qualitative data . Although you can observe this data, it is subjective and harder to analyze data in research, especially for comparison. Example: Quality data represents everything describing taste, experience, texture, or an opinion that is considered quality data. This type of data is usually collected through focus groups, personal qualitative interviews , qualitative observation or using open-ended questions in surveys.
  • Quantitative data: Any data expressed in numbers of numerical figures are called quantitative data . This type of data can be distinguished into categories, grouped, measured, calculated, or ranked. Example: questions such as age, rank, cost, length, weight, scores, etc. everything comes under this type of data. You can present such data in graphical format, charts, or apply statistical analysis methods to this data. The (Outcomes Measurement Systems) OMS questionnaires in surveys are a significant source of collecting numeric data.
  • Categorical data: It is data presented in groups. However, an item included in the categorical data cannot belong to more than one group. Example: A person responding to a survey by telling his living style, marital status, smoking habit, or drinking habit comes under the categorical data. A chi-square test is a standard method used to analyze this data.

Learn More : Examples of Qualitative Data in Education

Data analysis in qualitative research

Data analysis and qualitative data research work a little differently from the numerical data as the quality data is made up of words, descriptions, images, objects, and sometimes symbols. Getting insight from such complicated information is a complicated process. Hence it is typically used for exploratory research and data analysis .

Although there are several ways to find patterns in the textual information, a word-based method is the most relied and widely used global technique for research and data analysis. Notably, the data analysis process in qualitative research is manual. Here the researchers usually read the available data and find repetitive or commonly used words. 

For example, while studying data collected from African countries to understand the most pressing issues people face, researchers might find  “food”  and  “hunger” are the most commonly used words and will highlight them for further analysis.

LEARN ABOUT: Level of Analysis

The keyword context is another widely used word-based technique. In this method, the researcher tries to understand the concept by analyzing the context in which the participants use a particular keyword.  

For example , researchers conducting research and data analysis for studying the concept of ‘diabetes’ amongst respondents might analyze the context of when and how the respondent has used or referred to the word ‘diabetes.’

The scrutiny-based technique is also one of the highly recommended  text analysis  methods used to identify a quality data pattern. Compare and contrast is the widely used method under this technique to differentiate how a specific text is similar or different from each other. 

For example: To find out the “importance of resident doctor in a company,” the collected data is divided into people who think it is necessary to hire a resident doctor and those who think it is unnecessary. Compare and contrast is the best method that can be used to analyze the polls having single-answer questions types .

Metaphors can be used to reduce the data pile and find patterns in it so that it becomes easier to connect data with theory.

Variable Partitioning is another technique used to split variables so that researchers can find more coherent descriptions and explanations from the enormous data.

LEARN ABOUT: Qualitative Research Questions and Questionnaires

There are several techniques to analyze the data in qualitative research, but here are some commonly used methods,

  • Content Analysis:  It is widely accepted and the most frequently employed technique for data analysis in research methodology. It can be used to analyze the documented information from text, images, and sometimes from the physical items. It depends on the research questions to predict when and where to use this method.
  • Narrative Analysis: This method is used to analyze content gathered from various sources such as personal interviews, field observation, and  surveys . The majority of times, stories, or opinions shared by people are focused on finding answers to the research questions.
  • Discourse Analysis:  Similar to narrative analysis, discourse analysis is used to analyze the interactions with people. Nevertheless, this particular method considers the social context under which or within which the communication between the researcher and respondent takes place. In addition to that, discourse analysis also focuses on the lifestyle and day-to-day environment while deriving any conclusion.
  • Grounded Theory:  When you want to explain why a particular phenomenon happened, then using grounded theory for analyzing quality data is the best resort. Grounded theory is applied to study data about the host of similar cases occurring in different settings. When researchers are using this method, they might alter explanations or produce new ones until they arrive at some conclusion.

LEARN ABOUT: 12 Best Tools for Researchers

Data analysis in quantitative research

The first stage in research and data analysis is to make it for the analysis so that the nominal data can be converted into something meaningful. Data preparation consists of the below phases.

Phase I: Data Validation

Data validation is done to understand if the collected data sample is per the pre-set standards, or it is a biased data sample again divided into four different stages

  • Fraud: To ensure an actual human being records each response to the survey or the questionnaire
  • Screening: To make sure each participant or respondent is selected or chosen in compliance with the research criteria
  • Procedure: To ensure ethical standards were maintained while collecting the data sample
  • Completeness: To ensure that the respondent has answered all the questions in an online survey. Else, the interviewer had asked all the questions devised in the questionnaire.

Phase II: Data Editing

More often, an extensive research data sample comes loaded with errors. Respondents sometimes fill in some fields incorrectly or sometimes skip them accidentally. Data editing is a process wherein the researchers have to confirm that the provided data is free of such errors. They need to conduct necessary checks and outlier checks to edit the raw edit and make it ready for analysis.

Phase III: Data Coding

Out of all three, this is the most critical phase of data preparation associated with grouping and assigning values to the survey responses . If a survey is completed with a 1000 sample size, the researcher will create an age bracket to distinguish the respondents based on their age. Thus, it becomes easier to analyze small data buckets rather than deal with the massive data pile.

LEARN ABOUT: Steps in Qualitative Research

After the data is prepared for analysis, researchers are open to using different research and data analysis methods to derive meaningful insights. For sure, statistical analysis plans are the most favored to analyze numerical data. In statistical analysis, distinguishing between categorical data and numerical data is essential, as categorical data involves distinct categories or labels, while numerical data consists of measurable quantities. The method is again classified into two groups. First, ‘Descriptive Statistics’ used to describe data. Second, ‘Inferential statistics’ that helps in comparing the data .

Descriptive statistics

This method is used to describe the basic features of versatile types of data in research. It presents the data in such a meaningful way that pattern in the data starts making sense. Nevertheless, the descriptive analysis does not go beyond making conclusions. The conclusions are again based on the hypothesis researchers have formulated so far. Here are a few major types of descriptive analysis methods.

Measures of Frequency

  • Count, Percent, Frequency
  • It is used to denote home often a particular event occurs.
  • Researchers use it when they want to showcase how often a response is given.

Measures of Central Tendency

  • Mean, Median, Mode
  • The method is widely used to demonstrate distribution by various points.
  • Researchers use this method when they want to showcase the most commonly or averagely indicated response.

Measures of Dispersion or Variation

  • Range, Variance, Standard deviation
  • Here the field equals high/low points.
  • Variance standard deviation = difference between the observed score and mean
  • It is used to identify the spread of scores by stating intervals.
  • Researchers use this method to showcase data spread out. It helps them identify the depth until which the data is spread out that it directly affects the mean.

Measures of Position

  • Percentile ranks, Quartile ranks
  • It relies on standardized scores helping researchers to identify the relationship between different scores.
  • It is often used when researchers want to compare scores with the average count.

For quantitative research use of descriptive analysis often give absolute numbers, but the in-depth analysis is never sufficient to demonstrate the rationale behind those numbers. Nevertheless, it is necessary to think of the best method for research and data analysis suiting your survey questionnaire and what story researchers want to tell. For example, the mean is the best way to demonstrate the students’ average scores in schools. It is better to rely on the descriptive statistics when the researchers intend to keep the research or outcome limited to the provided  sample  without generalizing it. For example, when you want to compare average voting done in two different cities, differential statistics are enough.

Descriptive analysis is also called a ‘univariate analysis’ since it is commonly used to analyze a single variable.

Inferential statistics

Inferential statistics are used to make predictions about a larger population after research and data analysis of the representing population’s collected sample. For example, you can ask some odd 100 audiences at a movie theater if they like the movie they are watching. Researchers then use inferential statistics on the collected  sample  to reason that about 80-90% of people like the movie. 

Here are two significant areas of inferential statistics.

  • Estimating parameters: It takes statistics from the sample research data and demonstrates something about the population parameter.
  • Hypothesis test: I t’s about sampling research data to answer the survey research questions. For example, researchers might be interested to understand if the new shade of lipstick recently launched is good or not, or if the multivitamin capsules help children to perform better at games.

These are sophisticated analysis methods used to showcase the relationship between different variables instead of describing a single variable. It is often used when researchers want something beyond absolute numbers to understand the relationship between variables.

Here are some of the commonly used methods for data analysis in research.

  • Correlation: When researchers are not conducting experimental research or quasi-experimental research wherein the researchers are interested to understand the relationship between two or more variables, they opt for correlational research methods.
  • Cross-tabulation: Also called contingency tables,  cross-tabulation  is used to analyze the relationship between multiple variables.  Suppose provided data has age and gender categories presented in rows and columns. A two-dimensional cross-tabulation helps for seamless data analysis and research by showing the number of males and females in each age category.
  • Regression analysis: For understanding the strong relationship between two variables, researchers do not look beyond the primary and commonly used regression analysis method, which is also a type of predictive analysis used. In this method, you have an essential factor called the dependent variable. You also have multiple independent variables in regression analysis. You undertake efforts to find out the impact of independent variables on the dependent variable. The values of both independent and dependent variables are assumed as being ascertained in an error-free random manner.
  • Frequency tables: The statistical procedure is used for testing the degree to which two or more vary or differ in an experiment. A considerable degree of variation means research findings were significant. In many contexts, ANOVA testing and variance analysis are similar.
  • Analysis of variance: The statistical procedure is used for testing the degree to which two or more vary or differ in an experiment. A considerable degree of variation means research findings were significant. In many contexts, ANOVA testing and variance analysis are similar.
  • Researchers must have the necessary research skills to analyze and manipulation the data , Getting trained to demonstrate a high standard of research practice. Ideally, researchers must possess more than a basic understanding of the rationale of selecting one statistical method over the other to obtain better data insights.
  • Usually, research and data analytics projects differ by scientific discipline; therefore, getting statistical advice at the beginning of analysis helps design a survey questionnaire, select data collection  methods, and choose samples.

LEARN ABOUT: Best Data Collection Tools

  • The primary aim of data research and analysis is to derive ultimate insights that are unbiased. Any mistake in or keeping a biased mind to collect data, selecting an analysis method, or choosing  audience  sample il to draw a biased inference.
  • Irrelevant to the sophistication used in research data and analysis is enough to rectify the poorly defined objective outcome measurements. It does not matter if the design is at fault or intentions are not clear, but lack of clarity might mislead readers, so avoid the practice.
  • The motive behind data analysis in research is to present accurate and reliable data. As far as possible, avoid statistical errors, and find a way to deal with everyday challenges like outliers, missing data, data altering, data mining , or developing graphical representation.

LEARN MORE: Descriptive Research vs Correlational Research The sheer amount of data generated daily is frightening. Especially when data analysis has taken center stage. in 2018. In last year, the total data supply amounted to 2.8 trillion gigabytes. Hence, it is clear that the enterprises willing to survive in the hypercompetitive world must possess an excellent capability to analyze complex research data, derive actionable insights, and adapt to the new market needs.

LEARN ABOUT: Average Order Value

QuestionPro is an online survey platform that empowers organizations in data analysis and research and provides them a medium to collect data by creating appealing surveys.

MORE LIKE THIS

A/B testing software

Top 13 A/B Testing Software for Optimizing Your Website

Apr 12, 2024

contact center experience software

21 Best Contact Center Experience Software in 2024

Government Customer Experience

Government Customer Experience: Impact on Government Service

Apr 11, 2024

Employee Engagement App

Employee Engagement App: Top 11 For Workforce Improvement 

Apr 10, 2024

Other categories

  • Academic Research
  • Artificial Intelligence
  • Assessments
  • Brand Awareness
  • Case Studies
  • Communities
  • Consumer Insights
  • Customer effort score
  • Customer Engagement
  • Customer Experience
  • Customer Loyalty
  • Customer Research
  • Customer Satisfaction
  • Employee Benefits
  • Employee Engagement
  • Employee Retention
  • Friday Five
  • General Data Protection Regulation
  • Insights Hub
  • Life@QuestionPro
  • Market Research
  • Mobile diaries
  • Mobile Surveys
  • New Features
  • Online Communities
  • Question Types
  • Questionnaire
  • QuestionPro Products
  • Release Notes
  • Research Tools and Apps
  • Revenue at Risk
  • Survey Templates
  • Training Tips
  • Uncategorized
  • Video Learning Series
  • What’s Coming Up
  • Workforce Intelligence

Grad Coach

Qualitative Data Analysis Methods 101:

The “big 6” methods + examples.

By: Kerryn Warren (PhD) | Reviewed By: Eunice Rautenbach (D.Tech) | May 2020 (Updated April 2023)

Qualitative data analysis methods. Wow, that’s a mouthful. 

If you’re new to the world of research, qualitative data analysis can look rather intimidating. So much bulky terminology and so many abstract, fluffy concepts. It certainly can be a minefield!

Don’t worry – in this post, we’ll unpack the most popular analysis methods , one at a time, so that you can approach your analysis with confidence and competence – whether that’s for a dissertation, thesis or really any kind of research project.

Qualitative data analysis methods

What (exactly) is qualitative data analysis?

To understand qualitative data analysis, we need to first understand qualitative data – so let’s step back and ask the question, “what exactly is qualitative data?”.

Qualitative data refers to pretty much any data that’s “not numbers” . In other words, it’s not the stuff you measure using a fixed scale or complex equipment, nor do you analyse it using complex statistics or mathematics.

So, if it’s not numbers, what is it?

Words, you guessed? Well… sometimes , yes. Qualitative data can, and often does, take the form of interview transcripts, documents and open-ended survey responses – but it can also involve the interpretation of images and videos. In other words, qualitative isn’t just limited to text-based data.

So, how’s that different from quantitative data, you ask?

Simply put, qualitative research focuses on words, descriptions, concepts or ideas – while quantitative research focuses on numbers and statistics . Qualitative research investigates the “softer side” of things to explore and describe , while quantitative research focuses on the “hard numbers”, to measure differences between variables and the relationships between them. If you’re keen to learn more about the differences between qual and quant, we’ve got a detailed post over here .

qualitative data analysis vs quantitative data analysis

So, qualitative analysis is easier than quantitative, right?

Not quite. In many ways, qualitative data can be challenging and time-consuming to analyse and interpret. At the end of your data collection phase (which itself takes a lot of time), you’ll likely have many pages of text-based data or hours upon hours of audio to work through. You might also have subtle nuances of interactions or discussions that have danced around in your mind, or that you scribbled down in messy field notes. All of this needs to work its way into your analysis.

Making sense of all of this is no small task and you shouldn’t underestimate it. Long story short – qualitative analysis can be a lot of work! Of course, quantitative analysis is no piece of cake either, but it’s important to recognise that qualitative analysis still requires a significant investment in terms of time and effort.

Need a helping hand?

data analysis research proposal example

In this post, we’ll explore qualitative data analysis by looking at some of the most common analysis methods we encounter. We’re not going to cover every possible qualitative method and we’re not going to go into heavy detail – we’re just going to give you the big picture. That said, we will of course includes links to loads of extra resources so that you can learn more about whichever analysis method interests you.

Without further delay, let’s get into it.

The “Big 6” Qualitative Analysis Methods 

There are many different types of qualitative data analysis, all of which serve different purposes and have unique strengths and weaknesses . We’ll start by outlining the analysis methods and then we’ll dive into the details for each.

The 6 most popular methods (or at least the ones we see at Grad Coach) are:

  • Content analysis
  • Narrative analysis
  • Discourse analysis
  • Thematic analysis
  • Grounded theory (GT)
  • Interpretive phenomenological analysis (IPA)

Let’s take a look at each of them…

QDA Method #1: Qualitative Content Analysis

Content analysis is possibly the most common and straightforward QDA method. At the simplest level, content analysis is used to evaluate patterns within a piece of content (for example, words, phrases or images) or across multiple pieces of content or sources of communication. For example, a collection of newspaper articles or political speeches.

With content analysis, you could, for instance, identify the frequency with which an idea is shared or spoken about – like the number of times a Kardashian is mentioned on Twitter. Or you could identify patterns of deeper underlying interpretations – for instance, by identifying phrases or words in tourist pamphlets that highlight India as an ancient country.

Because content analysis can be used in such a wide variety of ways, it’s important to go into your analysis with a very specific question and goal, or you’ll get lost in the fog. With content analysis, you’ll group large amounts of text into codes , summarise these into categories, and possibly even tabulate the data to calculate the frequency of certain concepts or variables. Because of this, content analysis provides a small splash of quantitative thinking within a qualitative method.

Naturally, while content analysis is widely useful, it’s not without its drawbacks . One of the main issues with content analysis is that it can be very time-consuming , as it requires lots of reading and re-reading of the texts. Also, because of its multidimensional focus on both qualitative and quantitative aspects, it is sometimes accused of losing important nuances in communication.

Content analysis also tends to concentrate on a very specific timeline and doesn’t take into account what happened before or after that timeline. This isn’t necessarily a bad thing though – just something to be aware of. So, keep these factors in mind if you’re considering content analysis. Every analysis method has its limitations , so don’t be put off by these – just be aware of them ! If you’re interested in learning more about content analysis, the video below provides a good starting point.

QDA Method #2: Narrative Analysis 

As the name suggests, narrative analysis is all about listening to people telling stories and analysing what that means . Since stories serve a functional purpose of helping us make sense of the world, we can gain insights into the ways that people deal with and make sense of reality by analysing their stories and the ways they’re told.

You could, for example, use narrative analysis to explore whether how something is being said is important. For instance, the narrative of a prisoner trying to justify their crime could provide insight into their view of the world and the justice system. Similarly, analysing the ways entrepreneurs talk about the struggles in their careers or cancer patients telling stories of hope could provide powerful insights into their mindsets and perspectives . Simply put, narrative analysis is about paying attention to the stories that people tell – and more importantly, the way they tell them.

Of course, the narrative approach has its weaknesses , too. Sample sizes are generally quite small due to the time-consuming process of capturing narratives. Because of this, along with the multitude of social and lifestyle factors which can influence a subject, narrative analysis can be quite difficult to reproduce in subsequent research. This means that it’s difficult to test the findings of some of this research.

Similarly, researcher bias can have a strong influence on the results here, so you need to be particularly careful about the potential biases you can bring into your analysis when using this method. Nevertheless, narrative analysis is still a very useful qualitative analysis method – just keep these limitations in mind and be careful not to draw broad conclusions . If you’re keen to learn more about narrative analysis, the video below provides a great introduction to this qualitative analysis method.

QDA Method #3: Discourse Analysis 

Discourse is simply a fancy word for written or spoken language or debate . So, discourse analysis is all about analysing language within its social context. In other words, analysing language – such as a conversation, a speech, etc – within the culture and society it takes place. For example, you could analyse how a janitor speaks to a CEO, or how politicians speak about terrorism.

To truly understand these conversations or speeches, the culture and history of those involved in the communication are important factors to consider. For example, a janitor might speak more casually with a CEO in a company that emphasises equality among workers. Similarly, a politician might speak more about terrorism if there was a recent terrorist incident in the country.

So, as you can see, by using discourse analysis, you can identify how culture , history or power dynamics (to name a few) have an effect on the way concepts are spoken about. So, if your research aims and objectives involve understanding culture or power dynamics, discourse analysis can be a powerful method.

Because there are many social influences in terms of how we speak to each other, the potential use of discourse analysis is vast . Of course, this also means it’s important to have a very specific research question (or questions) in mind when analysing your data and looking for patterns and themes, or you might land up going down a winding rabbit hole.

Discourse analysis can also be very time-consuming  as you need to sample the data to the point of saturation – in other words, until no new information and insights emerge. But this is, of course, part of what makes discourse analysis such a powerful technique. So, keep these factors in mind when considering this QDA method. Again, if you’re keen to learn more, the video below presents a good starting point.

QDA Method #4: Thematic Analysis

Thematic analysis looks at patterns of meaning in a data set – for example, a set of interviews or focus group transcripts. But what exactly does that… mean? Well, a thematic analysis takes bodies of data (which are often quite large) and groups them according to similarities – in other words, themes . These themes help us make sense of the content and derive meaning from it.

Let’s take a look at an example.

With thematic analysis, you could analyse 100 online reviews of a popular sushi restaurant to find out what patrons think about the place. By reviewing the data, you would then identify the themes that crop up repeatedly within the data – for example, “fresh ingredients” or “friendly wait staff”.

So, as you can see, thematic analysis can be pretty useful for finding out about people’s experiences , views, and opinions . Therefore, if your research aims and objectives involve understanding people’s experience or view of something, thematic analysis can be a great choice.

Since thematic analysis is a bit of an exploratory process, it’s not unusual for your research questions to develop , or even change as you progress through the analysis. While this is somewhat natural in exploratory research, it can also be seen as a disadvantage as it means that data needs to be re-reviewed each time a research question is adjusted. In other words, thematic analysis can be quite time-consuming – but for a good reason. So, keep this in mind if you choose to use thematic analysis for your project and budget extra time for unexpected adjustments.

Thematic analysis takes bodies of data and groups them according to similarities (themes), which help us make sense of the content.

QDA Method #5: Grounded theory (GT) 

Grounded theory is a powerful qualitative analysis method where the intention is to create a new theory (or theories) using the data at hand, through a series of “ tests ” and “ revisions ”. Strictly speaking, GT is more a research design type than an analysis method, but we’ve included it here as it’s often referred to as a method.

What’s most important with grounded theory is that you go into the analysis with an open mind and let the data speak for itself – rather than dragging existing hypotheses or theories into your analysis. In other words, your analysis must develop from the ground up (hence the name). 

Let’s look at an example of GT in action.

Assume you’re interested in developing a theory about what factors influence students to watch a YouTube video about qualitative analysis. Using Grounded theory , you’d start with this general overarching question about the given population (i.e., graduate students). First, you’d approach a small sample – for example, five graduate students in a department at a university. Ideally, this sample would be reasonably representative of the broader population. You’d interview these students to identify what factors lead them to watch the video.

After analysing the interview data, a general pattern could emerge. For example, you might notice that graduate students are more likely to read a post about qualitative methods if they are just starting on their dissertation journey, or if they have an upcoming test about research methods.

From here, you’ll look for another small sample – for example, five more graduate students in a different department – and see whether this pattern holds true for them. If not, you’ll look for commonalities and adapt your theory accordingly. As this process continues, the theory would develop . As we mentioned earlier, what’s important with grounded theory is that the theory develops from the data – not from some preconceived idea.

So, what are the drawbacks of grounded theory? Well, some argue that there’s a tricky circularity to grounded theory. For it to work, in principle, you should know as little as possible regarding the research question and population, so that you reduce the bias in your interpretation. However, in many circumstances, it’s also thought to be unwise to approach a research question without knowledge of the current literature . In other words, it’s a bit of a “chicken or the egg” situation.

Regardless, grounded theory remains a popular (and powerful) option. Naturally, it’s a very useful method when you’re researching a topic that is completely new or has very little existing research about it, as it allows you to start from scratch and work your way from the ground up .

Grounded theory is used to create a new theory (or theories) by using the data at hand, as opposed to existing theories and frameworks.

QDA Method #6:   Interpretive Phenomenological Analysis (IPA)

Interpretive. Phenomenological. Analysis. IPA . Try saying that three times fast…

Let’s just stick with IPA, okay?

IPA is designed to help you understand the personal experiences of a subject (for example, a person or group of people) concerning a major life event, an experience or a situation . This event or experience is the “phenomenon” that makes up the “P” in IPA. Such phenomena may range from relatively common events – such as motherhood, or being involved in a car accident – to those which are extremely rare – for example, someone’s personal experience in a refugee camp. So, IPA is a great choice if your research involves analysing people’s personal experiences of something that happened to them.

It’s important to remember that IPA is subject – centred . In other words, it’s focused on the experiencer . This means that, while you’ll likely use a coding system to identify commonalities, it’s important not to lose the depth of experience or meaning by trying to reduce everything to codes. Also, keep in mind that since your sample size will generally be very small with IPA, you often won’t be able to draw broad conclusions about the generalisability of your findings. But that’s okay as long as it aligns with your research aims and objectives.

Another thing to be aware of with IPA is personal bias . While researcher bias can creep into all forms of research, self-awareness is critically important with IPA, as it can have a major impact on the results. For example, a researcher who was a victim of a crime himself could insert his own feelings of frustration and anger into the way he interprets the experience of someone who was kidnapped. So, if you’re going to undertake IPA, you need to be very self-aware or you could muddy the analysis.

IPA can help you understand the personal experiences of a person or group concerning a major life event, an experience or a situation.

How to choose the right analysis method

In light of all of the qualitative analysis methods we’ve covered so far, you’re probably asking yourself the question, “ How do I choose the right one? ”

Much like all the other methodological decisions you’ll need to make, selecting the right qualitative analysis method largely depends on your research aims, objectives and questions . In other words, the best tool for the job depends on what you’re trying to build. For example:

  • Perhaps your research aims to analyse the use of words and what they reveal about the intention of the storyteller and the cultural context of the time.
  • Perhaps your research aims to develop an understanding of the unique personal experiences of people that have experienced a certain event, or
  • Perhaps your research aims to develop insight regarding the influence of a certain culture on its members.

As you can probably see, each of these research aims are distinctly different , and therefore different analysis methods would be suitable for each one. For example, narrative analysis would likely be a good option for the first aim, while grounded theory wouldn’t be as relevant. 

It’s also important to remember that each method has its own set of strengths, weaknesses and general limitations. No single analysis method is perfect . So, depending on the nature of your research, it may make sense to adopt more than one method (this is called triangulation ). Keep in mind though that this will of course be quite time-consuming.

As we’ve seen, all of the qualitative analysis methods we’ve discussed make use of coding and theme-generating techniques, but the intent and approach of each analysis method differ quite substantially. So, it’s very important to come into your research with a clear intention before you decide which analysis method (or methods) to use.

Start by reviewing your research aims , objectives and research questions to assess what exactly you’re trying to find out – then select a qualitative analysis method that fits. Never pick a method just because you like it or have experience using it – your analysis method (or methods) must align with your broader research aims and objectives.

No single analysis method is perfect, so it can often make sense to adopt more than one  method (this is called triangulation).

Let’s recap on QDA methods…

In this post, we looked at six popular qualitative data analysis methods:

  • First, we looked at content analysis , a straightforward method that blends a little bit of quant into a primarily qualitative analysis.
  • Then we looked at narrative analysis , which is about analysing how stories are told.
  • Next up was discourse analysis – which is about analysing conversations and interactions.
  • Then we moved on to thematic analysis – which is about identifying themes and patterns.
  • From there, we went south with grounded theory – which is about starting from scratch with a specific question and using the data alone to build a theory in response to that question.
  • And finally, we looked at IPA – which is about understanding people’s unique experiences of a phenomenon.

Of course, these aren’t the only options when it comes to qualitative data analysis, but they’re a great starting point if you’re dipping your toes into qualitative research for the first time.

If you’re still feeling a bit confused, consider our private coaching service , where we hold your hand through the research process to help you develop your best work.

data analysis research proposal example

Psst… there’s more (for free)

This post is part of our dissertation mini-course, which covers everything you need to get started with your dissertation, thesis or research project. 

You Might Also Like:

Research design for qualitative and quantitative studies

84 Comments

Richard N

This has been very helpful. Thank you.

netaji

Thank you madam,

Mariam Jaiyeola

Thank you so much for this information

Nzube

I wonder it so clear for understand and good for me. can I ask additional query?

Lee

Very insightful and useful

Susan Nakaweesi

Good work done with clear explanations. Thank you.

Titilayo

Thanks so much for the write-up, it’s really good.

Hemantha Gunasekara

Thanks madam . It is very important .

Gumathandra

thank you very good

Pramod Bahulekar

This has been very well explained in simple language . It is useful even for a new researcher.

Derek Jansen

Great to hear that. Good luck with your qualitative data analysis, Pramod!

Adam Zahir

This is very useful information. And it was very a clear language structured presentation. Thanks a lot.

Golit,F.

Thank you so much.

Emmanuel

very informative sequential presentation

Shahzada

Precise explanation of method.

Alyssa

Hi, may we use 2 data analysis methods in our qualitative research?

Thanks for your comment. Most commonly, one would use one type of analysis method, but it depends on your research aims and objectives.

Dr. Manju Pandey

You explained it in very simple language, everyone can understand it. Thanks so much.

Phillip

Thank you very much, this is very helpful. It has been explained in a very simple manner that even a layman understands

Anne

Thank nicely explained can I ask is Qualitative content analysis the same as thematic analysis?

Thanks for your comment. No, QCA and thematic are two different types of analysis. This article might help clarify – https://onlinelibrary.wiley.com/doi/10.1111/nhs.12048

Rev. Osadare K . J

This is my first time to come across a well explained data analysis. so helpful.

Tina King

I have thoroughly enjoyed your explanation of the six qualitative analysis methods. This is very helpful. Thank you!

Bromie

Thank you very much, this is well explained and useful

udayangani

i need a citation of your book.

khutsafalo

Thanks a lot , remarkable indeed, enlighting to the best

jas

Hi Derek, What other theories/methods would you recommend when the data is a whole speech?

M

Keep writing useful artikel.

Adane

It is important concept about QDA and also the way to express is easily understandable, so thanks for all.

Carl Benecke

Thank you, this is well explained and very useful.

Ngwisa

Very helpful .Thanks.

Hajra Aman

Hi there! Very well explained. Simple but very useful style of writing. Please provide the citation of the text. warm regards

Hillary Mophethe

The session was very helpful and insightful. Thank you

This was very helpful and insightful. Easy to read and understand

Catherine

As a professional academic writer, this has been so informative and educative. Keep up the good work Grad Coach you are unmatched with quality content for sure.

Keep up the good work Grad Coach you are unmatched with quality content for sure.

Abdulkerim

Its Great and help me the most. A Million Thanks you Dr.

Emanuela

It is a very nice work

Noble Naade

Very insightful. Please, which of this approach could be used for a research that one is trying to elicit students’ misconceptions in a particular concept ?

Karen

This is Amazing and well explained, thanks

amirhossein

great overview

Tebogo

What do we call a research data analysis method that one use to advise or determining the best accounting tool or techniques that should be adopted in a company.

Catherine Shimechero

Informative video, explained in a clear and simple way. Kudos

Van Hmung

Waoo! I have chosen method wrong for my data analysis. But I can revise my work according to this guide. Thank you so much for this helpful lecture.

BRIAN ONYANGO MWAGA

This has been very helpful. It gave me a good view of my research objectives and how to choose the best method. Thematic analysis it is.

Livhuwani Reineth

Very helpful indeed. Thanku so much for the insight.

Storm Erlank

This was incredibly helpful.

Jack Kanas

Very helpful.

catherine

very educative

Wan Roslina

Nicely written especially for novice academic researchers like me! Thank you.

Talash

choosing a right method for a paper is always a hard job for a student, this is a useful information, but it would be more useful personally for me, if the author provide me with a little bit more information about the data analysis techniques in type of explanatory research. Can we use qualitative content analysis technique for explanatory research ? or what is the suitable data analysis method for explanatory research in social studies?

ramesh

that was very helpful for me. because these details are so important to my research. thank you very much

Kumsa Desisa

I learnt a lot. Thank you

Tesfa NT

Relevant and Informative, thanks !

norma

Well-planned and organized, thanks much! 🙂

Dr. Jacob Lubuva

I have reviewed qualitative data analysis in a simplest way possible. The content will highly be useful for developing my book on qualitative data analysis methods. Cheers!

Nyi Nyi Lwin

Clear explanation on qualitative and how about Case study

Ogobuchi Otuu

This was helpful. Thank you

Alicia

This was really of great assistance, it was just the right information needed. Explanation very clear and follow.

Wow, Thanks for making my life easy

C. U

This was helpful thanks .

Dr. Alina Atif

Very helpful…. clear and written in an easily understandable manner. Thank you.

Herb

This was so helpful as it was easy to understand. I’m a new to research thank you so much.

cissy

so educative…. but Ijust want to know which method is coding of the qualitative or tallying done?

Ayo

Thank you for the great content, I have learnt a lot. So helpful

Tesfaye

precise and clear presentation with simple language and thank you for that.

nneheng

very informative content, thank you.

Oscar Kuebutornye

You guys are amazing on YouTube on this platform. Your teachings are great, educative, and informative. kudos!

NG

Brilliant Delivery. You made a complex subject seem so easy. Well done.

Ankit Kumar

Beautifully explained.

Thanks a lot

Kidada Owen-Browne

Is there a video the captures the practical process of coding using automated applications?

Thanks for the comment. We don’t recommend using automated applications for coding, as they are not sufficiently accurate in our experience.

Mathewos Damtew

content analysis can be qualitative research?

Hend

THANK YOU VERY MUCH.

Dev get

Thank you very much for such a wonderful content

Kassahun Aman

do you have any material on Data collection

Prince .S. mpofu

What a powerful explanation of the QDA methods. Thank you.

Kassahun

Great explanation both written and Video. i have been using of it on a day to day working of my thesis project in accounting and finance. Thank you very much for your support.

BORA SAMWELI MATUTULI

very helpful, thank you so much

Submit a Comment Cancel reply

Your email address will not be published. Required fields are marked *

Save my name, email, and website in this browser for the next time I comment.

  • Print Friendly

Have a language expert improve your writing

Run a free plagiarism check in 10 minutes, automatically generate references for free.

  • Knowledge Base
  • Research process
  • How to Write a Research Proposal | Examples & Templates

How to Write a Research Proposal | Examples & Templates

Published on 30 October 2022 by Shona McCombes and Tegan George. Revised on 13 June 2023.

Structure of a research proposal

A research proposal describes what you will investigate, why it’s important, and how you will conduct your research.

The format of a research proposal varies between fields, but most proposals will contain at least these elements:

Introduction

Literature review.

  • Research design

Reference list

While the sections may vary, the overall objective is always the same. A research proposal serves as a blueprint and guide for your research plan, helping you get organised and feel confident in the path forward you choose to take.

Table of contents

Research proposal purpose, research proposal examples, research design and methods, contribution to knowledge, research schedule, frequently asked questions.

Academics often have to write research proposals to get funding for their projects. As a student, you might have to write a research proposal as part of a grad school application , or prior to starting your thesis or dissertation .

In addition to helping you figure out what your research can look like, a proposal can also serve to demonstrate why your project is worth pursuing to a funder, educational institution, or supervisor.

Research proposal length

The length of a research proposal can vary quite a bit. A bachelor’s or master’s thesis proposal can be just a few pages, while proposals for PhD dissertations or research funding are usually much longer and more detailed. Your supervisor can help you determine the best length for your work.

One trick to get started is to think of your proposal’s structure as a shorter version of your thesis or dissertation , only without the results , conclusion and discussion sections.

Download our research proposal template

Prevent plagiarism, run a free check.

Writing a research proposal can be quite challenging, but a good starting point could be to look at some examples. We’ve included a few for you below.

  • Example research proposal #1: ‘A Conceptual Framework for Scheduling Constraint Management’
  • Example research proposal #2: ‘ Medical Students as Mediators of Change in Tobacco Use’

Like your dissertation or thesis, the proposal will usually have a title page that includes:

  • The proposed title of your project
  • Your supervisor’s name
  • Your institution and department

The first part of your proposal is the initial pitch for your project. Make sure it succinctly explains what you want to do and why.

Your introduction should:

  • Introduce your topic
  • Give necessary background and context
  • Outline your  problem statement  and research questions

To guide your introduction , include information about:

  • Who could have an interest in the topic (e.g., scientists, policymakers)
  • How much is already known about the topic
  • What is missing from this current knowledge
  • What new insights your research will contribute
  • Why you believe this research is worth doing

As you get started, it’s important to demonstrate that you’re familiar with the most important research on your topic. A strong literature review  shows your reader that your project has a solid foundation in existing knowledge or theory. It also shows that you’re not simply repeating what other people have already done or said, but rather using existing research as a jumping-off point for your own.

In this section, share exactly how your project will contribute to ongoing conversations in the field by:

  • Comparing and contrasting the main theories, methods, and debates
  • Examining the strengths and weaknesses of different approaches
  • Explaining how will you build on, challenge, or synthesise prior scholarship

Following the literature review, restate your main  objectives . This brings the focus back to your own project. Next, your research design or methodology section will describe your overall approach, and the practical steps you will take to answer your research questions.

To finish your proposal on a strong note, explore the potential implications of your research for your field. Emphasise again what you aim to contribute and why it matters.

For example, your results might have implications for:

  • Improving best practices
  • Informing policymaking decisions
  • Strengthening a theory or model
  • Challenging popular or scientific beliefs
  • Creating a basis for future research

Last but not least, your research proposal must include correct citations for every source you have used, compiled in a reference list . To create citations quickly and easily, you can use our free APA citation generator .

Some institutions or funders require a detailed timeline of the project, asking you to forecast what you will do at each stage and how long it may take. While not always required, be sure to check the requirements of your project.

Here’s an example schedule to help you get started. You can also download a template at the button below.

Download our research schedule template

If you are applying for research funding, chances are you will have to include a detailed budget. This shows your estimates of how much each part of your project will cost.

Make sure to check what type of costs the funding body will agree to cover. For each item, include:

  • Cost : exactly how much money do you need?
  • Justification : why is this cost necessary to complete the research?
  • Source : how did you calculate the amount?

To determine your budget, think about:

  • Travel costs : do you need to go somewhere to collect your data? How will you get there, and how much time will you need? What will you do there (e.g., interviews, archival research)?
  • Materials : do you need access to any tools or technologies?
  • Help : do you need to hire any research assistants for the project? What will they do, and how much will you pay them?

Once you’ve decided on your research objectives , you need to explain them in your paper, at the end of your problem statement.

Keep your research objectives clear and concise, and use appropriate verbs to accurately convey the work that you will carry out for each one.

I will compare …

A research aim is a broad statement indicating the general purpose of your research project. It should appear in your introduction at the end of your problem statement , before your research objectives.

Research objectives are more specific than your research aim. They indicate the specific ways you’ll address the overarching aim.

A PhD, which is short for philosophiae doctor (doctor of philosophy in Latin), is the highest university degree that can be obtained. In a PhD, students spend 3–5 years writing a dissertation , which aims to make a significant, original contribution to current knowledge.

A PhD is intended to prepare students for a career as a researcher, whether that be in academia, the public sector, or the private sector.

A master’s is a 1- or 2-year graduate degree that can prepare you for a variety of careers.

All master’s involve graduate-level coursework. Some are research-intensive and intend to prepare students for further study in a PhD; these usually require their students to write a master’s thesis . Others focus on professional training for a specific career.

Critical thinking refers to the ability to evaluate information and to be aware of biases or assumptions, including your own.

Like information literacy , it involves evaluating arguments, identifying and solving problems in an objective and systematic way, and clearly communicating your ideas.

Cite this Scribbr article

If you want to cite this source, you can copy and paste the citation or click the ‘Cite this Scribbr article’ button to automatically add the citation to our free Reference Generator.

McCombes, S. & George, T. (2023, June 13). How to Write a Research Proposal | Examples & Templates. Scribbr. Retrieved 15 April 2024, from https://www.scribbr.co.uk/the-research-process/research-proposal-explained/

Is this article helpful?

Shona McCombes

Shona McCombes

Other students also liked, what is a research methodology | steps & tips, what is a literature review | guide, template, & examples, how to write a results section | tips & examples.

  • Privacy Policy

Buy Me a Coffee

Research Method

Home » How To Write A Research Proposal – Step-by-Step [Template]

How To Write A Research Proposal – Step-by-Step [Template]

Table of Contents

How To Write a Research Proposal

How To Write a Research Proposal

Writing a Research proposal involves several steps to ensure a well-structured and comprehensive document. Here is an explanation of each step:

1. Title and Abstract

  • Choose a concise and descriptive title that reflects the essence of your research.
  • Write an abstract summarizing your research question, objectives, methodology, and expected outcomes. It should provide a brief overview of your proposal.

2. Introduction:

  • Provide an introduction to your research topic, highlighting its significance and relevance.
  • Clearly state the research problem or question you aim to address.
  • Discuss the background and context of the study, including previous research in the field.

3. Research Objectives

  • Outline the specific objectives or aims of your research. These objectives should be clear, achievable, and aligned with the research problem.

4. Literature Review:

  • Conduct a comprehensive review of relevant literature and studies related to your research topic.
  • Summarize key findings, identify gaps, and highlight how your research will contribute to the existing knowledge.

5. Methodology:

  • Describe the research design and methodology you plan to employ to address your research objectives.
  • Explain the data collection methods, instruments, and analysis techniques you will use.
  • Justify why the chosen methods are appropriate and suitable for your research.

6. Timeline:

  • Create a timeline or schedule that outlines the major milestones and activities of your research project.
  • Break down the research process into smaller tasks and estimate the time required for each task.

7. Resources:

  • Identify the resources needed for your research, such as access to specific databases, equipment, or funding.
  • Explain how you will acquire or utilize these resources to carry out your research effectively.

8. Ethical Considerations:

  • Discuss any ethical issues that may arise during your research and explain how you plan to address them.
  • If your research involves human subjects, explain how you will ensure their informed consent and privacy.

9. Expected Outcomes and Significance:

  • Clearly state the expected outcomes or results of your research.
  • Highlight the potential impact and significance of your research in advancing knowledge or addressing practical issues.

10. References:

  • Provide a list of all the references cited in your proposal, following a consistent citation style (e.g., APA, MLA).

11. Appendices:

  • Include any additional supporting materials, such as survey questionnaires, interview guides, or data analysis plans.

Research Proposal Format

The format of a research proposal may vary depending on the specific requirements of the institution or funding agency. However, the following is a commonly used format for a research proposal:

1. Title Page:

  • Include the title of your research proposal, your name, your affiliation or institution, and the date.

2. Abstract:

  • Provide a brief summary of your research proposal, highlighting the research problem, objectives, methodology, and expected outcomes.

3. Introduction:

  • Introduce the research topic and provide background information.
  • State the research problem or question you aim to address.
  • Explain the significance and relevance of the research.
  • Review relevant literature and studies related to your research topic.
  • Summarize key findings and identify gaps in the existing knowledge.
  • Explain how your research will contribute to filling those gaps.

5. Research Objectives:

  • Clearly state the specific objectives or aims of your research.
  • Ensure that the objectives are clear, focused, and aligned with the research problem.

6. Methodology:

  • Describe the research design and methodology you plan to use.
  • Explain the data collection methods, instruments, and analysis techniques.
  • Justify why the chosen methods are appropriate for your research.

7. Timeline:

8. Resources:

  • Explain how you will acquire or utilize these resources effectively.

9. Ethical Considerations:

  • If applicable, explain how you will ensure informed consent and protect the privacy of research participants.

10. Expected Outcomes and Significance:

11. References:

12. Appendices:

Research Proposal Template

Here’s a template for a research proposal:

1. Introduction:

2. Literature Review:

3. Research Objectives:

4. Methodology:

5. Timeline:

6. Resources:

7. Ethical Considerations:

8. Expected Outcomes and Significance:

9. References:

10. Appendices:

Research Proposal Sample

Title: The Impact of Online Education on Student Learning Outcomes: A Comparative Study

1. Introduction

Online education has gained significant prominence in recent years, especially due to the COVID-19 pandemic. This research proposal aims to investigate the impact of online education on student learning outcomes by comparing them with traditional face-to-face instruction. The study will explore various aspects of online education, such as instructional methods, student engagement, and academic performance, to provide insights into the effectiveness of online learning.

2. Objectives

The main objectives of this research are as follows:

  • To compare student learning outcomes between online and traditional face-to-face education.
  • To examine the factors influencing student engagement in online learning environments.
  • To assess the effectiveness of different instructional methods employed in online education.
  • To identify challenges and opportunities associated with online education and suggest recommendations for improvement.

3. Methodology

3.1 Study Design

This research will utilize a mixed-methods approach to gather both quantitative and qualitative data. The study will include the following components:

3.2 Participants

The research will involve undergraduate students from two universities, one offering online education and the other providing face-to-face instruction. A total of 500 students (250 from each university) will be selected randomly to participate in the study.

3.3 Data Collection

The research will employ the following data collection methods:

  • Quantitative: Pre- and post-assessments will be conducted to measure students’ learning outcomes. Data on student demographics and academic performance will also be collected from university records.
  • Qualitative: Focus group discussions and individual interviews will be conducted with students to gather their perceptions and experiences regarding online education.

3.4 Data Analysis

Quantitative data will be analyzed using statistical software, employing descriptive statistics, t-tests, and regression analysis. Qualitative data will be transcribed, coded, and analyzed thematically to identify recurring patterns and themes.

4. Ethical Considerations

The study will adhere to ethical guidelines, ensuring the privacy and confidentiality of participants. Informed consent will be obtained, and participants will have the right to withdraw from the study at any time.

5. Significance and Expected Outcomes

This research will contribute to the existing literature by providing empirical evidence on the impact of online education on student learning outcomes. The findings will help educational institutions and policymakers make informed decisions about incorporating online learning methods and improving the quality of online education. Moreover, the study will identify potential challenges and opportunities related to online education and offer recommendations for enhancing student engagement and overall learning outcomes.

6. Timeline

The proposed research will be conducted over a period of 12 months, including data collection, analysis, and report writing.

The estimated budget for this research includes expenses related to data collection, software licenses, participant compensation, and research assistance. A detailed budget breakdown will be provided in the final research plan.

8. Conclusion

This research proposal aims to investigate the impact of online education on student learning outcomes through a comparative study with traditional face-to-face instruction. By exploring various dimensions of online education, this research will provide valuable insights into the effectiveness and challenges associated with online learning. The findings will contribute to the ongoing discourse on educational practices and help shape future strategies for maximizing student learning outcomes in online education settings.

About the author

' src=

Muhammad Hassan

Researcher, Academic Writer, Web developer

You may also like

How To Write A Proposal

How To Write A Proposal – Step By Step Guide...

Grant Proposal

Grant Proposal – Example, Template and Guide

How To Write A Business Proposal

How To Write A Business Proposal – Step-by-Step...

Business Proposal

Business Proposal – Templates, Examples and Guide

Proposal

Proposal – Types, Examples, and Writing Guide

How to choose an Appropriate Method for Research?

How to choose an Appropriate Method for Research?

helpful professor logo

17 Research Proposal Examples

research proposal example sections definition and purpose, explained below

A research proposal systematically and transparently outlines a proposed research project.

The purpose of a research proposal is to demonstrate a project’s viability and the researcher’s preparedness to conduct an academic study. It serves as a roadmap for the researcher.

The process holds value both externally (for accountability purposes and often as a requirement for a grant application) and intrinsic value (for helping the researcher to clarify the mechanics, purpose, and potential signficance of the study).

Key sections of a research proposal include: the title, abstract, introduction, literature review, research design and methods, timeline, budget, outcomes and implications, references, and appendix. Each is briefly explained below.

Watch my Guide: How to Write a Research Proposal

Get your Template for Writing your Research Proposal Here (With AI Prompts!)

Research Proposal Sample Structure

Title: The title should present a concise and descriptive statement that clearly conveys the core idea of the research projects. Make it as specific as possible. The reader should immediately be able to grasp the core idea of the intended research project. Often, the title is left too vague and does not help give an understanding of what exactly the study looks at.

Abstract: Abstracts are usually around 250-300 words and provide an overview of what is to follow – including the research problem , objectives, methods, expected outcomes, and significance of the study. Use it as a roadmap and ensure that, if the abstract is the only thing someone reads, they’ll get a good fly-by of what will be discussed in the peice.

Introduction: Introductions are all about contextualization. They often set the background information with a statement of the problem. At the end of the introduction, the reader should understand what the rationale for the study truly is. I like to see the research questions or hypotheses included in the introduction and I like to get a good understanding of what the significance of the research will be. It’s often easiest to write the introduction last

Literature Review: The literature review dives deep into the existing literature on the topic, demosntrating your thorough understanding of the existing literature including themes, strengths, weaknesses, and gaps in the literature. It serves both to demonstrate your knowledge of the field and, to demonstrate how the proposed study will fit alongside the literature on the topic. A good literature review concludes by clearly demonstrating how your research will contribute something new and innovative to the conversation in the literature.

Research Design and Methods: This section needs to clearly demonstrate how the data will be gathered and analyzed in a systematic and academically sound manner. Here, you need to demonstrate that the conclusions of your research will be both valid and reliable. Common points discussed in the research design and methods section include highlighting the research paradigm, methodologies, intended population or sample to be studied, data collection techniques, and data analysis procedures . Toward the end of this section, you are encouraged to also address ethical considerations and limitations of the research process , but also to explain why you chose your research design and how you are mitigating the identified risks and limitations.

Timeline: Provide an outline of the anticipated timeline for the study. Break it down into its various stages (including data collection, data analysis, and report writing). The goal of this section is firstly to establish a reasonable breakdown of steps for you to follow and secondly to demonstrate to the assessors that your project is practicable and feasible.

Budget: Estimate the costs associated with the research project and include evidence for your estimations. Typical costs include staffing costs, equipment, travel, and data collection tools. When applying for a scholarship, the budget should demonstrate that you are being responsible with your expensive and that your funding application is reasonable.

Expected Outcomes and Implications: A discussion of the anticipated findings or results of the research, as well as the potential contributions to the existing knowledge, theory, or practice in the field. This section should also address the potential impact of the research on relevant stakeholders and any broader implications for policy or practice.

References: A complete list of all the sources cited in the research proposal, formatted according to the required citation style. This demonstrates the researcher’s familiarity with the relevant literature and ensures proper attribution of ideas and information.

Appendices (if applicable): Any additional materials, such as questionnaires, interview guides, or consent forms, that provide further information or support for the research proposal. These materials should be included as appendices at the end of the document.

Research Proposal Examples

Research proposals often extend anywhere between 2,000 and 15,000 words in length. The following snippets are samples designed to briefly demonstrate what might be discussed in each section.

1. Education Studies Research Proposals

See some real sample pieces:

  • Assessment of the perceptions of teachers towards a new grading system
  • Does ICT use in secondary classrooms help or hinder student learning?
  • Digital technologies in focus project
  • Urban Middle School Teachers’ Experiences of the Implementation of
  • Restorative Justice Practices
  • Experiences of students of color in service learning

Consider this hypothetical education research proposal:

The Impact of Game-Based Learning on Student Engagement and Academic Performance in Middle School Mathematics

Abstract: The proposed study will explore multiplayer game-based learning techniques in middle school mathematics curricula and their effects on student engagement. The study aims to contribute to the current literature on game-based learning by examining the effects of multiplayer gaming in learning.

Introduction: Digital game-based learning has long been shunned within mathematics education for fears that it may distract students or lower the academic integrity of the classrooms. However, there is emerging evidence that digital games in math have emerging benefits not only for engagement but also academic skill development. Contributing to this discourse, this study seeks to explore the potential benefits of multiplayer digital game-based learning by examining its impact on middle school students’ engagement and academic performance in a mathematics class.

Literature Review: The literature review has identified gaps in the current knowledge, namely, while game-based learning has been extensively explored, the role of multiplayer games in supporting learning has not been studied.

Research Design and Methods: This study will employ a mixed-methods research design based upon action research in the classroom. A quasi-experimental pre-test/post-test control group design will first be used to compare the academic performance and engagement of middle school students exposed to game-based learning techniques with those in a control group receiving instruction without the aid of technology. Students will also be observed and interviewed in regard to the effect of communication and collaboration during gameplay on their learning.

Timeline: The study will take place across the second term of the school year with a pre-test taking place on the first day of the term and the post-test taking place on Wednesday in Week 10.

Budget: The key budgetary requirements will be the technologies required, including the subscription cost for the identified games and computers.

Expected Outcomes and Implications: It is expected that the findings will contribute to the current literature on game-based learning and inform educational practices, providing educators and policymakers with insights into how to better support student achievement in mathematics.

2. Psychology Research Proposals

See some real examples:

  • A situational analysis of shared leadership in a self-managing team
  • The effect of musical preference on running performance
  • Relationship between self-esteem and disordered eating amongst adolescent females

Consider this hypothetical psychology research proposal:

The Effects of Mindfulness-Based Interventions on Stress Reduction in College Students

Abstract: This research proposal examines the impact of mindfulness-based interventions on stress reduction among college students, using a pre-test/post-test experimental design with both quantitative and qualitative data collection methods .

Introduction: College students face heightened stress levels during exam weeks. This can affect both mental health and test performance. This study explores the potential benefits of mindfulness-based interventions such as meditation as a way to mediate stress levels in the weeks leading up to exam time.

Literature Review: Existing research on mindfulness-based meditation has shown the ability for mindfulness to increase metacognition, decrease anxiety levels, and decrease stress. Existing literature has looked at workplace, high school and general college-level applications. This study will contribute to the corpus of literature by exploring the effects of mindfulness directly in the context of exam weeks.

Research Design and Methods: Participants ( n= 234 ) will be randomly assigned to either an experimental group, receiving 5 days per week of 10-minute mindfulness-based interventions, or a control group, receiving no intervention. Data will be collected through self-report questionnaires, measuring stress levels, semi-structured interviews exploring participants’ experiences, and students’ test scores.

Timeline: The study will begin three weeks before the students’ exam week and conclude after each student’s final exam. Data collection will occur at the beginning (pre-test of self-reported stress levels) and end (post-test) of the three weeks.

Expected Outcomes and Implications: The study aims to provide evidence supporting the effectiveness of mindfulness-based interventions in reducing stress among college students in the lead up to exams, with potential implications for mental health support and stress management programs on college campuses.

3. Sociology Research Proposals

  • Understanding emerging social movements: A case study of ‘Jersey in Transition’
  • The interaction of health, education and employment in Western China
  • Can we preserve lower-income affordable neighbourhoods in the face of rising costs?

Consider this hypothetical sociology research proposal:

The Impact of Social Media Usage on Interpersonal Relationships among Young Adults

Abstract: This research proposal investigates the effects of social media usage on interpersonal relationships among young adults, using a longitudinal mixed-methods approach with ongoing semi-structured interviews to collect qualitative data.

Introduction: Social media platforms have become a key medium for the development of interpersonal relationships, particularly for young adults. This study examines the potential positive and negative effects of social media usage on young adults’ relationships and development over time.

Literature Review: A preliminary review of relevant literature has demonstrated that social media usage is central to development of a personal identity and relationships with others with similar subcultural interests. However, it has also been accompanied by data on mental health deline and deteriorating off-screen relationships. The literature is to-date lacking important longitudinal data on these topics.

Research Design and Methods: Participants ( n = 454 ) will be young adults aged 18-24. Ongoing self-report surveys will assess participants’ social media usage, relationship satisfaction, and communication patterns. A subset of participants will be selected for longitudinal in-depth interviews starting at age 18 and continuing for 5 years.

Timeline: The study will be conducted over a period of five years, including recruitment, data collection, analysis, and report writing.

Expected Outcomes and Implications: This study aims to provide insights into the complex relationship between social media usage and interpersonal relationships among young adults, potentially informing social policies and mental health support related to social media use.

4. Nursing Research Proposals

  • Does Orthopaedic Pre-assessment clinic prepare the patient for admission to hospital?
  • Nurses’ perceptions and experiences of providing psychological care to burns patients
  • Registered psychiatric nurse’s practice with mentally ill parents and their children

Consider this hypothetical nursing research proposal:

The Influence of Nurse-Patient Communication on Patient Satisfaction and Health Outcomes following Emergency Cesarians

Abstract: This research will examines the impact of effective nurse-patient communication on patient satisfaction and health outcomes for women following c-sections, utilizing a mixed-methods approach with patient surveys and semi-structured interviews.

Introduction: It has long been known that effective communication between nurses and patients is crucial for quality care. However, additional complications arise following emergency c-sections due to the interaction between new mother’s changing roles and recovery from surgery.

Literature Review: A review of the literature demonstrates the importance of nurse-patient communication, its impact on patient satisfaction, and potential links to health outcomes. However, communication between nurses and new mothers is less examined, and the specific experiences of those who have given birth via emergency c-section are to date unexamined.

Research Design and Methods: Participants will be patients in a hospital setting who have recently had an emergency c-section. A self-report survey will assess their satisfaction with nurse-patient communication and perceived health outcomes. A subset of participants will be selected for in-depth interviews to explore their experiences and perceptions of the communication with their nurses.

Timeline: The study will be conducted over a period of six months, including rolling recruitment, data collection, analysis, and report writing within the hospital.

Expected Outcomes and Implications: This study aims to provide evidence for the significance of nurse-patient communication in supporting new mothers who have had an emergency c-section. Recommendations will be presented for supporting nurses and midwives in improving outcomes for new mothers who had complications during birth.

5. Social Work Research Proposals

  • Experiences of negotiating employment and caring responsibilities of fathers post-divorce
  • Exploring kinship care in the north region of British Columbia

Consider this hypothetical social work research proposal:

The Role of a Family-Centered Intervention in Preventing Homelessness Among At-Risk Youthin a working-class town in Northern England

Abstract: This research proposal investigates the effectiveness of a family-centered intervention provided by a local council area in preventing homelessness among at-risk youth. This case study will use a mixed-methods approach with program evaluation data and semi-structured interviews to collect quantitative and qualitative data .

Introduction: Homelessness among youth remains a significant social issue. This study aims to assess the effectiveness of family-centered interventions in addressing this problem and identify factors that contribute to successful prevention strategies.

Literature Review: A review of the literature has demonstrated several key factors contributing to youth homelessness including lack of parental support, lack of social support, and low levels of family involvement. It also demonstrates the important role of family-centered interventions in addressing this issue. Drawing on current evidence, this study explores the effectiveness of one such intervention in preventing homelessness among at-risk youth in a working-class town in Northern England.

Research Design and Methods: The study will evaluate a new family-centered intervention program targeting at-risk youth and their families. Quantitative data on program outcomes, including housing stability and family functioning, will be collected through program records and evaluation reports. Semi-structured interviews with program staff, participants, and relevant stakeholders will provide qualitative insights into the factors contributing to program success or failure.

Timeline: The study will be conducted over a period of six months, including recruitment, data collection, analysis, and report writing.

Budget: Expenses include access to program evaluation data, interview materials, data analysis software, and any related travel costs for in-person interviews.

Expected Outcomes and Implications: This study aims to provide evidence for the effectiveness of family-centered interventions in preventing youth homelessness, potentially informing the expansion of or necessary changes to social work practices in Northern England.

Research Proposal Template

Get your Detailed Template for Writing your Research Proposal Here (With AI Prompts!)

This is a template for a 2500-word research proposal. You may find it difficult to squeeze everything into this wordcount, but it’s a common wordcount for Honors and MA-level dissertations.

Your research proposal is where you really get going with your study. I’d strongly recommend working closely with your teacher in developing a research proposal that’s consistent with the requirements and culture of your institution, as in my experience it varies considerably. The above template is from my own courses that walk students through research proposals in a British School of Education.

Chris

Chris Drew (PhD)

Dr. Chris Drew is the founder of the Helpful Professor. He holds a PhD in education and has published over 20 articles in scholarly journals. He is the former editor of the Journal of Learning Development in Higher Education. [Image Descriptor: Photo of Chris]

  • Chris Drew (PhD) https://helpfulprofessor.com/author/chris-drew-phd/ 5 Top Tips for Succeeding at University
  • Chris Drew (PhD) https://helpfulprofessor.com/author/chris-drew-phd/ 50 Durable Goods Examples
  • Chris Drew (PhD) https://helpfulprofessor.com/author/chris-drew-phd/ 100 Consumer Goods Examples
  • Chris Drew (PhD) https://helpfulprofessor.com/author/chris-drew-phd/ 30 Globalization Pros and Cons

8 thoughts on “17 Research Proposal Examples”

' src=

Very excellent research proposals

' src=

very helpful

' src=

Very helpful

' src=

Dear Sir, I need some help to write an educational research proposal. Thank you.

' src=

Hi Levi, use the site search bar to ask a question and I’ll likely have a guide already written for your specific question. Thanks for reading!

' src=

very good research proposal

' src=

Thank you so much sir! ❤️

' src=

Very helpful 👌

Leave a Comment Cancel Reply

Your email address will not be published. Required fields are marked *

Globalstats Academic

Statistic consultant for academic research.

Data Analysis in Quantitative Research Proposal

Data Analysis in Quantitative Research Proposal

Definition of data analysis.

Data analysis in quantitative research proposal is one part of the chapter that researchers need in the beginning of writing a research proposal. Whereas in the research, it is an activity after the data from all collected. Activities in data analysis are: grouping data based on variables and types of respondents, tabulating data based on variables from all respondents, presenting data for each variable studied, doing calculations to answer the problem formulation, and doing calculations to test the proposed hypothesis.

Quantitative Data Analysis Techniques

In a research proposal, it must be clear what method of analysis is capable of answering the research hypothesis. Hypothesis is a temporary answer to the research problem. Data analysis techniques in quantitative research commonly use statistics. There are two kinds of statistical data analysis in research. These are descriptive statistics and inferential statistics. Inferential statistics include parametric and non-parametric statistics.

Descriptive statistics

In preparing research proposals, researchers need to explain what is descriptive research. Descriptive statistic is a method to analyze data by describing data without intending to make generalizations. Descriptive statistics only describes the sample data and does not make conclusions that apply to the population. While, conclusion that applies to the population, then the data analysis technique is inferential statistics. In addition descriptive statistics also function to present information in such a way that data generated from research can be utilized by others in need.

Inferential Statistics

When researchers want to generalize broader conclusions in the research proposal, it is necessary to write inferential statistics. Inferential statistics (often also commonly inductive statistics or probability statistics) are statistical techniques used to analyze sample data and the results are applied to populations. It requires a random sampling process.

Inferential research involves statistical probability. Using of probability theory is to approach sample to the population. A conclusion applying to the population has a chance of error and truth level. If the chance of error is 5%, then the truth level is 95%. While the chance of error is 1%, then the truth level is 99%. This opportunity for error and truth is the level of significance. Statistical tables are useful for carrying out tests of the significance of this error. For example, t-test will use table-t. in each table provides significance level of what percentage of the results. For example the correlation analysis found a correlation coefficient of 0.54 and for a significance of 5% it means that a variable relationship of 0.54 can apply to 95 out of 100 samples taken from a population. Inferential statistics is a higher level then descriptive statistics. To that in the research proposal, the flow of conclusions becomes clear. Data Analysis is to make general conclusions (conclusions), make a prediction (prediction), or make an estimate (estimation).

U.S. flag

An official website of the United States government

The .gov means it’s official. Federal government websites often end in .gov or .mil. Before sharing sensitive information, make sure you’re on a federal government site.

The site is secure. The https:// ensures that you are connecting to the official website and that any information you provide is encrypted and transmitted securely.

  • Publications
  • Account settings

Preview improvements coming to the PMC website in October 2024. Learn More or Try it out now .

  • Advanced Search
  • Journal List
  • Indian J Anaesth
  • v.60(9); 2016 Sep

How to write a research proposal?

Department of Anaesthesiology, Bangalore Medical College and Research Institute, Bengaluru, Karnataka, India

Devika Rani Duggappa

Writing the proposal of a research work in the present era is a challenging task due to the constantly evolving trends in the qualitative research design and the need to incorporate medical advances into the methodology. The proposal is a detailed plan or ‘blueprint’ for the intended study, and once it is completed, the research project should flow smoothly. Even today, many of the proposals at post-graduate evaluation committees and application proposals for funding are substandard. A search was conducted with keywords such as research proposal, writing proposal and qualitative using search engines, namely, PubMed and Google Scholar, and an attempt has been made to provide broad guidelines for writing a scientifically appropriate research proposal.

INTRODUCTION

A clean, well-thought-out proposal forms the backbone for the research itself and hence becomes the most important step in the process of conduct of research.[ 1 ] The objective of preparing a research proposal would be to obtain approvals from various committees including ethics committee [details under ‘Research methodology II’ section [ Table 1 ] in this issue of IJA) and to request for grants. However, there are very few universally accepted guidelines for preparation of a good quality research proposal. A search was performed with keywords such as research proposal, funding, qualitative and writing proposals using search engines, namely, PubMed, Google Scholar and Scopus.

Five ‘C’s while writing a literature review

An external file that holds a picture, illustration, etc.
Object name is IJA-60-631-g001.jpg

BASIC REQUIREMENTS OF A RESEARCH PROPOSAL

A proposal needs to show how your work fits into what is already known about the topic and what new paradigm will it add to the literature, while specifying the question that the research will answer, establishing its significance, and the implications of the answer.[ 2 ] The proposal must be capable of convincing the evaluation committee about the credibility, achievability, practicality and reproducibility (repeatability) of the research design.[ 3 ] Four categories of audience with different expectations may be present in the evaluation committees, namely academic colleagues, policy-makers, practitioners and lay audiences who evaluate the research proposal. Tips for preparation of a good research proposal include; ‘be practical, be persuasive, make broader links, aim for crystal clarity and plan before you write’. A researcher must be balanced, with a realistic understanding of what can be achieved. Being persuasive implies that researcher must be able to convince other researchers, research funding agencies, educational institutions and supervisors that the research is worth getting approval. The aim of the researcher should be clearly stated in simple language that describes the research in a way that non-specialists can comprehend, without use of jargons. The proposal must not only demonstrate that it is based on an intelligent understanding of the existing literature but also show that the writer has thought about the time needed to conduct each stage of the research.[ 4 , 5 ]

CONTENTS OF A RESEARCH PROPOSAL

The contents or formats of a research proposal vary depending on the requirements of evaluation committee and are generally provided by the evaluation committee or the institution.

In general, a cover page should contain the (i) title of the proposal, (ii) name and affiliation of the researcher (principal investigator) and co-investigators, (iii) institutional affiliation (degree of the investigator and the name of institution where the study will be performed), details of contact such as phone numbers, E-mail id's and lines for signatures of investigators.

The main contents of the proposal may be presented under the following headings: (i) introduction, (ii) review of literature, (iii) aims and objectives, (iv) research design and methods, (v) ethical considerations, (vi) budget, (vii) appendices and (viii) citations.[ 4 ]

Introduction

It is also sometimes termed as ‘need for study’ or ‘abstract’. Introduction is an initial pitch of an idea; it sets the scene and puts the research in context.[ 6 ] The introduction should be designed to create interest in the reader about the topic and proposal. It should convey to the reader, what you want to do, what necessitates the study and your passion for the topic.[ 7 ] Some questions that can be used to assess the significance of the study are: (i) Who has an interest in the domain of inquiry? (ii) What do we already know about the topic? (iii) What has not been answered adequately in previous research and practice? (iv) How will this research add to knowledge, practice and policy in this area? Some of the evaluation committees, expect the last two questions, elaborated under a separate heading of ‘background and significance’.[ 8 ] Introduction should also contain the hypothesis behind the research design. If hypothesis cannot be constructed, the line of inquiry to be used in the research must be indicated.

Review of literature

It refers to all sources of scientific evidence pertaining to the topic in interest. In the present era of digitalisation and easy accessibility, there is an enormous amount of relevant data available, making it a challenge for the researcher to include all of it in his/her review.[ 9 ] It is crucial to structure this section intelligently so that the reader can grasp the argument related to your study in relation to that of other researchers, while still demonstrating to your readers that your work is original and innovative. It is preferable to summarise each article in a paragraph, highlighting the details pertinent to the topic of interest. The progression of review can move from the more general to the more focused studies, or a historical progression can be used to develop the story, without making it exhaustive.[ 1 ] Literature should include supporting data, disagreements and controversies. Five ‘C's may be kept in mind while writing a literature review[ 10 ] [ Table 1 ].

Aims and objectives

The research purpose (or goal or aim) gives a broad indication of what the researcher wishes to achieve in the research. The hypothesis to be tested can be the aim of the study. The objectives related to parameters or tools used to achieve the aim are generally categorised as primary and secondary objectives.

Research design and method

The objective here is to convince the reader that the overall research design and methods of analysis will correctly address the research problem and to impress upon the reader that the methodology/sources chosen are appropriate for the specific topic. It should be unmistakably tied to the specific aims of your study.

In this section, the methods and sources used to conduct the research must be discussed, including specific references to sites, databases, key texts or authors that will be indispensable to the project. There should be specific mention about the methodological approaches to be undertaken to gather information, about the techniques to be used to analyse it and about the tests of external validity to which researcher is committed.[ 10 , 11 ]

The components of this section include the following:[ 4 ]

Population and sample

Population refers to all the elements (individuals, objects or substances) that meet certain criteria for inclusion in a given universe,[ 12 ] and sample refers to subset of population which meets the inclusion criteria for enrolment into the study. The inclusion and exclusion criteria should be clearly defined. The details pertaining to sample size are discussed in the article “Sample size calculation: Basic priniciples” published in this issue of IJA.

Data collection

The researcher is expected to give a detailed account of the methodology adopted for collection of data, which include the time frame required for the research. The methodology should be tested for its validity and ensure that, in pursuit of achieving the results, the participant's life is not jeopardised. The author should anticipate and acknowledge any potential barrier and pitfall in carrying out the research design and explain plans to address them, thereby avoiding lacunae due to incomplete data collection. If the researcher is planning to acquire data through interviews or questionnaires, copy of the questions used for the same should be attached as an annexure with the proposal.

Rigor (soundness of the research)

This addresses the strength of the research with respect to its neutrality, consistency and applicability. Rigor must be reflected throughout the proposal.

It refers to the robustness of a research method against bias. The author should convey the measures taken to avoid bias, viz. blinding and randomisation, in an elaborate way, thus ensuring that the result obtained from the adopted method is purely as chance and not influenced by other confounding variables.

Consistency

Consistency considers whether the findings will be consistent if the inquiry was replicated with the same participants and in a similar context. This can be achieved by adopting standard and universally accepted methods and scales.

Applicability

Applicability refers to the degree to which the findings can be applied to different contexts and groups.[ 13 ]

Data analysis

This section deals with the reduction and reconstruction of data and its analysis including sample size calculation. The researcher is expected to explain the steps adopted for coding and sorting the data obtained. Various tests to be used to analyse the data for its robustness, significance should be clearly stated. Author should also mention the names of statistician and suitable software which will be used in due course of data analysis and their contribution to data analysis and sample calculation.[ 9 ]

Ethical considerations

Medical research introduces special moral and ethical problems that are not usually encountered by other researchers during data collection, and hence, the researcher should take special care in ensuring that ethical standards are met. Ethical considerations refer to the protection of the participants' rights (right to self-determination, right to privacy, right to autonomy and confidentiality, right to fair treatment and right to protection from discomfort and harm), obtaining informed consent and the institutional review process (ethical approval). The researcher needs to provide adequate information on each of these aspects.

Informed consent needs to be obtained from the participants (details discussed in further chapters), as well as the research site and the relevant authorities.

When the researcher prepares a research budget, he/she should predict and cost all aspects of the research and then add an additional allowance for unpredictable disasters, delays and rising costs. All items in the budget should be justified.

Appendices are documents that support the proposal and application. The appendices will be specific for each proposal but documents that are usually required include informed consent form, supporting documents, questionnaires, measurement tools and patient information of the study in layman's language.

As with any scholarly research paper, you must cite the sources you used in composing your proposal. Although the words ‘references and bibliography’ are different, they are used interchangeably. It refers to all references cited in the research proposal.

Successful, qualitative research proposals should communicate the researcher's knowledge of the field and method and convey the emergent nature of the qualitative design. The proposal should follow a discernible logic from the introduction to presentation of the appendices.

Financial support and sponsorship

Conflicts of interest.

There are no conflicts of interest.

We use cookies to enhance our website for you. Proceed if you agree to this policy or learn more about it.

  • Essay Database >
  • Essays Samples >
  • Essay Types >
  • Research Proposal Example

Data Analysis Research Proposals Samples For Students

132 samples of this type

While studying in college, you will inevitably have to write a bunch of Research Proposals on Data Analysis. Lucky you if putting words together and transforming them into relevant content comes naturally to you; if it's not the case, you can save the day by finding a previously written Data Analysis Research Proposal example and using it as a model to follow.

This is when you will certainly find WowEssays' free samples catalog extremely helpful as it includes numerous expertly written works on most various Data Analysis Research Proposals topics. Ideally, you should be able to find a piece that meets your criteria and use it as a template to build your own Research Proposal. Alternatively, our competent essay writers can deliver you an original Data Analysis Research Proposal model crafted from scratch according to your personal instructions.

Good Research Proposal About Statement: In My Field Of Information System Operation Management (Isom), The Current

Proposal for the current issue in my field research project.

There has been an increase in incidents involving digital cyber attacks worldwide. Most of the databases of corporations are targeted by criminals since they contain sensitive company information, which obtained can be used against the company. Hackers normally attack the databases to acquire sensitive information such as credit card numbers and other personal information of unsuspecting customers and use it to commit internet fraud.

Good Example Of Research Proposal On Plan For Developing Request For Proposal Document For Immunization Database In The

The request for proposal (RFP) document for this project will be designed to address the following issues contained in the sections and subsections outlined: - Cover page This section will contain the following: name of the department (department of public health), which seeks to recruit technical team to develop the database; title of the request for proposal, date, due date for submitting the proposal, and the officer to contact. The information will be written in that order centered at the cover page. - Table of content

The table of content will contain sections within the document

Creating the critical path research proposal sample, critical path.

Critical path description Critical path in project management are the project activities that takes the longest time and are in sequence. The project team has to give a lot of consideration to these activities such that the completion date of the project is not affected.

The critical path of the system that is to be developed will follow the following stages:

Don't waste your time searching for a sample.

Get your research proposal done by professional writers!

Just from $10/page

Research Proposal On Texting & Driving

Database design research proposal examples, free research proposal on association between modes of delivery, example of research proposal on database system implementation and importance, storage and processing research proposal examples, free research proposal on other details, section 1: design document.

Section 1: Design Document IntroductionCloud technology is the latest technology that helps businesses achieve their goals. It consists of a number of servers linked together to provide services to clients. Since a large number of servers are linked, clients have seemingly unlimited storage space. Expansion of businesses generates large volumes of data. Also with cross border expansions and varying time zones businesses face problems in accessing data. These problems can be resolved by migrating to cloud computing. The two main strengths of cloud computing are scalability and virtualization. This report presents a case for adoption of cloud technology.

Need for Cloud Technology

Good research proposal about gcu: res 880.

Dropping Out or Pushed Out: The Impact of High School Dropout Rate Relative to High Stakes Testing Policy in Wayne County, State of Michigan

Dissertation Prospectus Dropping Out or Pushed Out: The Impact of High School Dropout Rate Relative to High Stakes Testing Policy in Wayne County, State of Michigan <Insert Chair Name>

Dissertation Prospectus

Research proposal on target population, riordan erp research proposal sample, executive summary, example of academic research proposal on data analysis, research proposal on elementary school-aged obesity: review of home-based and school-based interventions sustainability, elementary school-aged obesity, free suggested by the writer research proposal sample.

1. The organizations need in their process to have access to transactional systems to generate, analyze and consult information, but surely the company could have problems regarding response times; the information distributed in different systems that are not homogeneous could cause inflexible and complex reports and results.

Historical Justification

Free research proposal about data analysis and analytics research, the role of the senior level informatacist in the informational technology change, research proposal on face reconstruction and recognition technology in 3d format, burglary research proposal example, introduction, draw topic & writing ideas from this research proposal on h0: “there is no significant relationship between employee turnover and performance appraisal.”, proposal for original business research, research proposal on efficient 3d face reconstruction from random image and recognition from database, research proposal on a on risks and challenges associated with the adoption of cloud, free librarygrantproposer research proposal sample, executive summary, free research methodology 9 research proposal example, data analysis of grief and nursing research proposal, central question research proposal example, breast feeding research proposal sample, contact sports and concussion research proposal sample, marital satisfaction and work-family balance research proposals examples, marital satisfaction and work-family conflict, windows network proposal: a top-quality research proposal for your inspiration, the relationship between school attendance and academic performance in learning research proposal to use for practical writing help, chapter 1: introduction, free research proposal about the usefulness for offender profiling by florida state police investigators, sample research proposal on windows network proposal, the development of new brighton tourism destination research proposal example.

Tourism is one of the most fast developing sectors in the world. Many countries that have good beaches have found the need to develop tourism destinations that will assist in marketing their attraction sites. The research below shows the development of New Brighton tourism destination. It offers an introduction to tourism followed by the background information on New Brighton. A review on different researches conducted on the same topic is analyzed in order to come up with the research gaps. Moreover, the proposal gives the recommended method of data collection. Primary data collection method is preferred for this research.

... Read more Business Development Planning Infrastructure Tourism Time Management Bible Information Destination Data Customers Industry 11 Pages Free Nursing Proposal Research Proposal Sample

Chapter one: introduction 1.

Background 1 Statement of the Problem 2 Research Objectives 2 Research Questions 3 Significance of the study 3 Chapter Two: Literature Review 4 Introduction 4 Theoretical Literature 4 Empirical Literature 5 System Barriers 5 Healthcare Professional Barrier 7 Social Barriers 7 Patient Barrier 8 Chapter Three: Methodology 8 Introduction 8 Research Design 9 Model Specification 9 Study Area 9 Target Population 10 Data Type and data Source 10 Data collection 10 Data Analysis 10

References 11

Implementation of biometrics technology for security applications in immigration research proposal, sustainability in the event tomorrowland- methodologies research proposal examples, nutrition vs medication research proposal sample, research proposal on coping strategies used by african american women to deal with racism and sexism.

INTRODUCTION

Research Proposal On Nursing Homes

Statement of the problem.

Old age is associated with several mental illnesses, which culminate into other psychosocial issues. For example, dementia and other related conditions such as the Creutzfeudz Jacob’s disease – as caused by advanced senility – have become common in the modern world. Usually, these diseases affect old people, which become more and more problematic as the age advances. The role of caring for the old people has therefore become very vital, usually requiring increased care and special treatment to these people.

Transitional Nursing For The Elderly Population Research Proposals Example

Nursing research.

Research Implementation Phase As mentioned earlier in the paper, in order to answer the five main research questions formulated for this research paper, four different types of data collection methods will be utilized; namely, secondary research of existing literature and primary research (survey-based questionnaires, interviews and direct observation). The implementation phase will include a brief overview of how the project will be executed on-ground, the expenditures that will be needed, as well as how the process of data analysis will be conducted.

Project Schedule and Timeframe

Direct practice improvement project prospectus research proposal sample.

<Insert Title here> <Insert Name> <Insert Submission Date> <Insert Chairperson Name>

Free Criminal Law Research Proposal Example

Example of research proposal on alcoholism and addictive personality, good example of direct practice improvement project prospectus research proposal, variables that influence psychological well-being following significant weight loss submitted by.

<Insert Name> <Insert Submission Date> <Insert Chairperson Name>

Effective Communication In The Workplace: The Relationship Between Employee Performance And Organizational Communication Research Proposal Samples

Literature review, good example of data analysis plans research proposal.

In order to gain a better and an in-depth understanding of a research question, the researcher must use a data analysis plan that satisfies all the needs of the research design and the respective variables. As such, data analysis for this research would be done using the SPSS software. The beauty of using this statistical analysis software is that it offers a wide variety of statistical features that can be applied for different types of variables, both demographic and study variables.

Plan for demographic data analysis

Evaluation on the effects of lilac-colored paper in readability research proposal sample, restatement of initial research questions, does religion and spirituality help veterans cope with military-related ptsd, and lower the risk of suicide: example research proposal by an expert writer to follow.

(Author, Department, University,

Corresponding Address and email)

Example of research proposal on cognitive behavioral therapy in women with depression, the lived experiences of staff nurses on burnout in oncology department research proposal example, the lived experiences of staff nurses on burnout in oncology department.

Research Question: What are the lived experiences of nurses in the Oncology Department? What are the coping experiences of nurses in the Oncology Department? Objectives of the study: Conceptual Framework Figure 1 Conceptual Framework

Research design

Growth opportunities: example research proposal by an expert writer to follow, section 1: project introduction, expertly crafted research proposal on research to investigate cultural visibility in influencing perinatal depression prevention methods among underserved women, example of a change proposal for branch m of the xyz company research proposal, sample research proposal on statement of the problem, investigating the significance of reputation management in real estate business during an economic crisis.

Investigating the Significance of Reputation Management in Real Estate Business during an Economic Crisis Introduction

Good Leveraging Big Data To Analyze Consumer Behavior In Digital And Retail Marketing Research Proposal Example

A research thesis proposal submitted to dr, data analysis and analytics research utilization project proposal research proposal examples, data analysis and analytics research, prevention research proposal sample, invasion of exotic channa argus in usa and its, research proposal on social implications that influence younger people to want to stay slim, overcoming communication barriers research proposal, executive proposal project research proposal samples.

Password recovery email has been sent to [email protected]

Use your new password to log in

You are not register!

By clicking Register, you agree to our Terms of Service and that you have read our Privacy Policy .

Now you can download documents directly to your device!

Check your email! An email with your password has already been sent to you! Now you can download documents directly to your device.

or Use the QR code to Save this Paper to Your Phone

The sample is NOT original!

Short on a deadline?

Don't waste time. Get help with 11% off using code - GETWOWED

No, thanks! I'm fine with missing my deadline

Fastest Nurse Insight Engine

  • MEDICAL ASSISSTANT
  • Abdominal Key
  • Anesthesia Key
  • Basicmedical Key
  • Otolaryngology & Ophthalmology
  • Musculoskeletal Key
  • Obstetric, Gynecology and Pediatric
  • Oncology & Hematology
  • Plastic Surgery & Dermatology
  • Clinical Dentistry
  • Radiology Key
  • Thoracic Key
  • Veterinary Medicine
  • Gold Membership

The Research Proposal: Analysing Data

Introduction This chapter is linked to the analysing data section of the web program. As well as describing how you intend collecting the data for your research study in your research proposal, you need to state how you will analyse the data. The problem is that ‘raw’ data on their own are meaningless, so before we can use the data, they need to be organised and interpreted – in other words, analysed (Botti & Endacott 2005). If you have data from a quantitative research study, they will normally be in a numerical form; in order to use these data, you need to use statistics to analyse them. For many people, the term statistics can immediately make them panic, even mentally switch off, but in fact dealing with statistics can be fun! We all use statistics every day without thinking of it as statistics. The statistics we typically use most frequently are ‘averages’ and ‘percentages’ – as in the average age of the footballers playing for Manchester City is …, or the percentage of girls who go to university to take a nursing degree is …,and so on. So statistics are nothing to fret about, as you will discover as you work through this chapter. Totally different from the analysis of data obtained from a quantitative research study is the analysis of data obtained from a qualitative research study. Here the data may be numerical, but they mainly comprise words, or sometimes non-verbal and non-numerical data such as drawings. In many ways, qualitative research data are harder to analyse because, unlike with quantitative research data which convert readily to statistics – and there are many different tests/computer programs to analyse the statistics for you – qualitative data analysis is less direct and possibly a little nebulous, as you will see. Although there are certain processes that we can use to help us analyse our qualitative data, the fact is that qualitative data are more open to interpretation than are quantitative data. Therefore, we shall start by looking at, and discussing, how we can analyse data from quantitative research studies. Quantitative data analysis First, a brief resume of the types of data collection from chapter 8. When we are undertaking quantitative research, data collection involves the production of numerical data to address the research objectives, questions and/or hypotheses. During this process, the variables in the study are measured using a variety of techniques, including: observation; interview; questionnaire; scales; physiological measurements. Data analysis What do we mean by data analysis? Well, data analysis is a process we use in order to reduce, organise and give meaning to the data we have collected by using the data collection tools discussed in chapter 8. Within quantitative research, the analysis of data involves the use of: descriptive and exploratory procedures to describe the study variables and the sample; statistical techniques in order to test any proposed relationships; techniques that will help us to make predictions; techniques that will allow us to examine cause and effect. It is worth pointing out at that, unlike in the past, when dealing with statistics we no longer need to do calculations ourselves. Computers can perform most analyses. The choice of technique that is used in any research study is determined mainly by: the research objectives, questions or hypotheses; the research design; the research instruments and how/what they can measure. So, without further ado, let us start by looking at how we can undertake and analyse quantitative research, with a brief introduction to statistics. Introduction to statistics Always treat statistics with caution as well as respect, for as the British prime minister Benjamin Disraeli (1804–1881) once famously (or infamously) said: ‘There are three kinds of lies: lies, damned lies and statistics.’ In this section we are going to take a general look at what we mean by statistics and statistical data. So, let us start with some definitions: Data We talk about data in statistics. Data (singular ‘datum’) are things known or assumed as a basis for inference, or, to put it more simply, ‘Pieces of information that are collected during a study’ (Burns & Grove 2005: 733). Statistics Statistics are concerned with the systematic collection of numerical data and their interpretation. Burns & Grove (2005: 752) refer to a statistic as simply ‘a numerical value obtained from a sample that is used to estimate the parameters of a population’ . The word’statistics’ can be used to refer to: numerical facts, such as the number of people living in a particular town; the study of ways of collecting and interpreting these facts. It can be argued that figures are not facts in themselves. It is only when they are interpreted that they become relevant to discussions and decisions. So statistics are there to inform our discussions – they are a means to an end, not an end in themselves. Sample You may recall from chapter 7 that a sample is a group of people, events, behaviours or other elements you need to have in order to conduct your research study. Population A population is what we call the group of individuals or elements that meets the sampling criteria (a sample being representative of that population). So, if we were interested in looking at the number of childhood cancers diagnosed in 2006 in the United Kingdom (i.e. our ‘population’), we might not be able to survey the entire population of children with cancer in that year living in the UK, and so we would look at a sample taken from all the children with cancer in 2006 living in the UK (see chapter 7 for the criteria we need to apply to our sample). Parameter Parameter has, like many English words, several meanings. According to the Concise Oxford Dictionary (1991) it can be defined as: a quantity constant in the case considered but varying in different cases; a measurable (or quantifiable) characteristic or feature; a constant element or factor, particularly serving as a limit or boundary. You may be wondering at this point what this means in terms of research. Well, to simplify matters, let us look at the definition given by Burns & Grove (2005 : 745): ‘a measure or numerical value of a population’ – in other words, the numbers found in any given population. Statistics can be divided into two types: Descriptive statistics Description ‘involves identifying and understanding the nature and attributes of nursing phenomena and sometimes the relationships among these phenomena’ (Burns & Grove 2005: 733). According to Sim & Wright (2000), descriptive statistics have two functions: 1. organising, summarising and presenting numerical data; 2. describing the distribution (i.e. the structure of the data collected) which will help with the analysis of inferential statistics, which are much more complex (Botti & Endacott 2005). Descriptive statistics include the presentation of data in tables and diagrams, as well as the calculation of percentages, averages, measures of dispersion (the variation or variability within the statistics) and correlation (the degree of relationship between two variables), in order to show the relevant features of the data and reduce them to manageable proportions. In other words, descriptive statistics involve the summary of the statistics in such a way that the researcher can organise the data in these statistics and give them meaning and insight. Inductive/inferential statistics Inductive or inferential statistics involve methods of inferring properties of a population on the basis of known results from a sample that is representative of the population. To infer is to deduce or conclude from facts and reasoning (Shorter Oxford English Dictionary 2007), and inference is the use of inductive reasoning to move from a specific case to a general truth (and hence is also known as inductive reasoning). The Shorter Oxford English Dictionary gives one meaning of inductive as ‘leading on to’, and according to Burns & Grove (2005: 739), in relation to statistics, inductive reasoning is ‘reasoning from the specific to the general in which particular instances are observed and then combined into a larger whole – or general statement’. Thus, with these types of statistics, statistics are used to infer results from the specific study of a sample to a general statement about the larger population. So, inferential statistics are statistics that are designed to allow an inference to be made from a sample statistic to a population parameter. They are commonly used to test hypotheses (see chapter 5) that consist of similarities and differences in subsets of the sample under study. These methods are based directly on probability theory. Probability theory ‘addresses relative rather than absolute causality. Thus, from a probability perspective, a cause will not produce a specific effect each time that particular cause occurs, but the probability value indicates how frequently the effect might occur with the cause’ (Burns & Grove 2005: 747); in other words, given a certain situation, behaviour or event, how often that situation, behaviour or event might cause a particular result. So much for the general background to statistics; now we can start to look at some actual simple statistics. To begin with, you need to know that symbols are used in statistics to simplify their presentation. Some of the more common ones are given below. Symbols used in statistics As a form of shorthand, we use symbols instead of words: μ (lower-case Greek letter mu) = the mean χ (lower-case Greek letter chi) = each of the individual operations Σ (capital Greek letter sigma) = the operation of summing all the values of χ. n = number of observations σ (lower-case Greek letter sigma) = standard deviation (also symbolised by ‘s’). x = mean value s 2 = variance SS = sum of squared errors When you come to the statistical equations, you can refer to this list for the meanings of the symbols. Now, to boost your confidence and to demonstrate that statistics can be quite simple (and perhaps a little fun) it is time to look at some simple and common statistical calculations, which are regularly used in statistics – and to some extent in our everyday lives, although you may not be aware that you are using them. Average ‘Average’ is a measure of central tendency and of location. It summarises a group of figures and smoothes out any abnormalities. It also provides a mental picture of the distribution that it represents. In addition, it can provide knowledge about the whole distribution. The word is often used loosely in everyday conversation; however, used in this way, it can conceal important facts. There is more than one kind of average, so we shall consider these next, commencing with the type that we use most often when we talk about the ‘average’. Arithmetic mean ‘Arithmetic mean’ is the type of average to which most people refer when they use the word ‘average’, and it can be defined as the sum of the items divided by the number of these items. So, arithmetic mean = ‘the total value of items’ % the ‘total number of items’ or in symbols: Where Σ = the sum of χ (value of items) and n = number of items. The actual mathematical equation is For example, if we were to look at the ages of child branch student nurses, a group of 21 students, in their first year the university, we might find that there are: 11 aged 18 years 5 aged 19 2 aged 20 1 aged 25 1 aged 33 1 aged 51 According to our equation, to get the arithmetic mean of the group’ s age, we add all the ages together (= 442) and divide that by 21. This gives us an average of 21 years (or 21.047619 if you used a calculator). So we can see that the average age of this group of students on commencement at the university is 21 years. But can we now say that the age of child branch students on commencing university everywhere is 21 years? Hopefully, your answer is no. After what you have read in chapter 7 and 8, as well as in the web program, you should have realised that the group (our sample) is far too small for us to be able to generalise to child branch students everywhere else (the population). To Do Using the method and equation above, work out the arithmetic mean average age of your friends. You should also have noticed that, even in our small sample, our average of 21 years conceals a very important fact: the great majority of these students are aged 18–20 years when they commence university; there are just three students in the group who are aged 21 years or over. Therefore, the average does not give an accurate idea of the group’s age range, let alone allowing us to generalise. Always bear in mind the words of Thomas Carlyle (1840: 9) ‘A witty statesman said, you might prove anything by figures.’ However, we do have a couple of calculations that we can do with these figures that can give us a more realistic average. The first of these is the median. Median The median, another type of average, is the value of the middle item of a distribution which is set out in order. i.e. n plus 1 divided by 2, where n is the number of items. Now we can return to the ages of the cohort of 21 child branch student nurses when they commence at the university, namely: 11 aged 18 years 5 aged 19 2 aged 20 1 aged 25 1 aged 33 1 aged 51 To Do Use the formula above for median calculations, and work out the median of the group. Remember that the middle point of the ages of the group when laid out in a line from youngest to oldest is the median Did you get the same answer? You can see that the mid-point is the age at rank order number 11, which in this case is 18 years (as there are ten ages before that one and ten after it). If we look at the formula , then the mid-point is 21+1 divided by 2, or i.e. in this case the eleventh age in the row, which is 18. To Do Now do the same calculation with the ages of your friends. Is it different from your arithmetic mean average? It may be if you have friends of many different ages. In our example, does the median age give a more accurate idea of the group as a whole than the arithmetic mean average does? I think you would agree that the answer has to be yes, because 18 years is closer to the age of the great majority of the group. However, it still does not identify the anomaly that is the ages of the older students. So, we have yet another type of average to look at – the mode. Mode The mode is the numerical value of a score that occurs with the greatest frequency in a distribution. However, it does not necessarily indicate the centre of the set of data (Burns & Grove 2005). To Do Using the ages of our group of child branch students, work out the modal age of the group and see if you get the answer that we do. Again, use the ages to work out the mode (remember that the mode is the number that occurs most often): 11 aged 18 years 5 aged 19 2 aged 20 1 aged 25 1 aged 33 1 aged 51 In this case, 18 years of age occurs more frequently than any other age in our group; therefore the mode of the group is 18 years. In this case, the mode is the same as the median (but both are different from the mean), but this is not always the case. Consequently, you need to look closely at any statistics, because they are not always what they seem to be. To Do Again, using the ages of your friends, work out the mode of their ages. How does it compare with the other two ‘averages’? Finally, let us look at range. Range The range is an everyday method of describing the dispersion (spread) of data. It can be defined as the highest value in a distribution less the lowest. Let us look again at our group of child branch student nurses. The range of ages is 18–51 years. Therefore, the range of ages is 51 – 18 years = 33 years. If you combine this with a modal age of 18, what does this tell you about the general age of student nurses in the child branch? Answer: with a modal age of 18, although there is a range of 33 years (from 18 to 51 years), whilst most of the student nurses are young, there are some older ones (and even one of 51 years), but most of the child branch student nurses are at the younger end of the age range. To Do Finally, work out the range of ages of your group of friends. Now you can reflect on your friends, their ages and whether you have friends mainly of the same age as you or friends whose ages are very wide-ranging. Does this say anything about you and your criteria for friendship? So, you can see that statistics are not just a string of numbers and lots of calculations, but are a starting point for debate and discussion. Reflection on averages Often range is given along with mean, median or mode. Why? Answer: the advantage of giving range and one of the averages is that you get a much better idea of the group’s ages as in the example of the child branch student nurses. It also overcomes the problem of how we demonstrate that there are some major anomalies in our group, which are virtually ignored by the various averages. (The ‘anomalies’ in our example are the students who are much older than most of the group.) So, we can say that the group of child branch student nurses has a: mean of 21 years median of 18 years mode of 18 years range of 18–51 years and we now have a clearer picture of the group in terms of their ages. Standard deviation We just have one more important simple statistic to discuss: standard deviation. Standard deviation is a simple measure of the variability or dispersion (distribution) of a set of data. Basically, it measures the spread of the data about the mean value. A low standard deviation is an indication that all the individual data points are very close to the same value (i.e. the mean – see above), while a high standard deviation is an indication that the data are spread over a wide range of values. There is a formula to help us to work out standard deviation: The same symbol you were introduced to earlier are relevant to this formula. So this formula (in words) is ‘Standard deviation (σ) equals the square root (√) of the sum of (Σ) the mean value minus the mean squared ([χ–μ] 2 ), divided by the number of observations (n). For an example of how we calculate a standard deviation, let us look at the group of students (our population) we used above in our discussion of averages. We want to find the standard deviation of: 18 18 18 18 18 18 18 18 18 18 18 19 19 19 19 19 20 20 25 33 51 years First, we have to work out the arithmetic mean. We have already done this and obtained a mean of 21. Now we need to subtract that from each of the ages and square the result. So, for example, 18 – 21 = –3, and squared = 9 (minus numbers squared = positive numbers). Score Deviation Squared deviation χ χ − μ (χ − μ) 2 18 −3 9 18 −3 9 18 −3 9 18 −3 9 18 −3 9 18 −3 9 18 −3 9 18 −3 9 18 −3 9 18 −3 9 18 −3 9 19 −2 4 19 −2 4 19 −2 4 19 −2 4 19 −2 4 20 −1 2 20 −1 2 25 4 16 33 12 144 51 12 900 Next we have to add up these results. (This is where a calculator comes in handy, and even more so for the next two parts of the equation.) The total of the squared deviations is 1,183, which we now divide by the number of subjects (21), or 1,183 ÷ 21 = 56.34. Now find the square root of 56.34, which is 7.505997601918082 (rounded = 7.5). This is the standard deviation, but what do we do with it? The 7.5 score that we have for this group of students is used to give us an idea of the spread of the data that we have regarding the age of the age range. So if the mean is 21, first we have to see how many of the students fall within one standard deviation (i.e. 7.5) of the mean. In other words, how many students fall within the range of 13.5 – 28.5 (7.5 either side of 21). Well, 18 out of 21 fall between 13.5 and 21, whilst one falls within the range between 21 and 28.5. That means that 19 out of 21 (90%) of the student nurses fall within one standard deviation of the mean. Next we look at how many fall between 6 and 13.5 and between 28.5 and 36 (i.e. within the second standard deviation). The answer is that none falls between 6 and 13.5, and one falls between 28.5 and 36 (5%). Finally, three standard deviations would be ages between 0 and 6 and between 36 and 43.5 – the answer is none. The only remaining student falls between 43.5 and 51, which is four standard deviations. So, given these results, it is clear that, although the group is very homogeneous as regards their ages, there are two students who cause the spread of data to be extensive. According to Hinton (1995: 15–16), in many cases ‘most of the scores (about two-thirds – about 66.7%) will lie within one standard deviation less than, and one standard deviation greater than, the mean’. Our group does not quite fit that finding, with 90% being within one standard deviation, however, there is a special reason for this, and that is that our population is unique in that student nurses, particularly child branch students, are generally starting out in the world afterleaving school, and so they will generally be around the same age. A word of caution – the formula works for a population. If, however,we wanted to calculate the standard deviation of a sample, the formula is slightly different, namely: However, the rest of the calculation is as described above, but with the final stage of the calculation using the denominator n – 1 rather than just n. Summary This concludes our brief look at statistics. All the statistics you will encounter are variants of these. Some of them may be more complicated, but, like the examples given above, all are attempting to make sense of numerical data. Finally, a reminder to be wary of statistics when they are presented to you: ‘He uses statistics as a drunken man uses a lamp post – for support rather than illumination’ (attributed to Andrew Lang, 1844–1912) . Data analysis Let us commence our look at data analysis by looking at a hypothetical research study. There are different ways of approaching our research question/ hypothesis, and the way we put together our research question will determine the type of methodology, data collection method, statistics, analysis and presentation we shall use to approach our research problem. Examples of research questions Are females more likely to be nurses than males? Is the proportion of males who are nurses the same as the proportion of females? Is there a relationship between gender and becoming a nurse? In these examples, you can see that there are three ways to approach the research problem, which is concerned with the relationship between males and females in nursing, but the way in which the problem is expressed as a question will determine your methodology. Another research problem with variables Hypothesis

Share this:

  • Click to share on Twitter (Opens in new window)
  • Click to share on Facebook (Opens in new window)

Related posts:

  • The Research Proposal:Research Design
  • The Research Proposal: Current Research Issues in Healthcare
  • Philosophical Assumptions
  • The Research Proposal: Developing the Research Question

data analysis research proposal example

Stay updated, free articles. Join our Telegram channel

Comments are closed for this page.

data analysis research proposal example

Full access? Get Clinical Tree

data analysis research proposal example

COMMENTS

  1. How to Write a Research Proposal

    Research proposal examples. Writing a research proposal can be quite challenging, but a good starting point could be to look at some examples. We've included a few for you below. Example research proposal #1: "A Conceptual Framework for Scheduling Constraint Management" Example research proposal #2: "Medical Students as Mediators of ...

  2. Top 10 Data Analysis Research Proposal Templates with Examples and Samples

    Template 3 - Project Context and Objectives of Research Data Analysis Proposal. Click Here to Download. This slide simplifies the process of impressing your clients. It explains your project's context and objectives, leaving a lasting impact on your audience. Project Context: We provide a clear and concise space for explaining the background ...

  3. PDF DATA ANALYSIS PLAN

    analysis plan: example. • The primary endpoint is free testosterone level, measured at baseline and after the diet intervention (6 mo). • We expect the distribution of free T levels to be skewed and will log-transform the data for analysis. Values below the detectable limit for the assay will be imputed with one-half the limit.

  4. PDF Quantitative Research Proposal Sample

    A Sample Quantitative Research Proposal Written in the APA 6th Style [Note: This sample proposal is based on a composite of past proposals, simulated information and references, and material I've included for illustration purposes - it is based roughly on a ... guide the analysis of data. First, it is hypothesized that perceptions of life ...

  5. How to Create a Data Analysis Plan: A Detailed Guide

    A good data analysis plan should summarize the variables as demonstrated in Figure 1 below. Figure 1. Presentation of variables in a data analysis plan. 5. Statistical software. There are tons of software packages for data analysis, some common examples are SPSS, Epi Info, SAS, STATA, Microsoft Excel.

  6. Top 10 Data Analytics Proposal Templates with Samples and Examples

    Template 4: Plan of Action for Data Analytics Proposal. This Plan of Action Template is crucial as it offers a clear roadmap, outlining the specific methodologies and steps to achieve the project's goals. It divides the action plan into 6 weeks and includes activities like analyzing, selecting, implementing, adopting, and scaling.

  7. Top 10 Statistical Analysis Research Proposal Templates ...

    The curated collection of the Top 10 Statistical Analysis Research Proposal Templates offers a valuable resource for researchers and scholars. These templates, real-world samples, and examples provide a solid foundation for crafting compelling research proposals. By harnessing these tools, researchers can streamline proposal creation, ensuring ...

  8. Data Analytics Resources: Writing a Research Proposal

    A research proposal describes what you will investigate, why it's important, and how you will conduct your research. Your paper should include the topic, research question and hypothesis, methods, predictions, and results (if not actual, then projected). ... Demonstrate that you have carefully considered the data, tools, and procedures ...

  9. Research Proposal Example (PDF + Template)

    Detailed Walkthrough + Free Proposal Template. If you're getting started crafting your research proposal and are looking for a few examples of research proposals, you've come to the right place. In this video, we walk you through two successful (approved) research proposals, one for a Master's-level project, and one for a PhD-level ...

  10. Creating a Data Analysis Plan: What to Consider When Choosing

    The first step in a data analysis plan is to describe the data collected in the study. This can be done using figures to give a visual presentation of the data and statistics to generate numeric descriptions of the data. Selection of an appropriate figure to represent a particular set of data depends on the measurement level of the variable.

  11. Data Analysis in Research: Types & Methods

    Definition of research in data analysis: According to LeCompte and Schensul, research data analysis is a process used by researchers to reduce data to a story and interpret it to derive insights. The data analysis process helps reduce a large chunk of data into smaller fragments, which makes sense. Three essential things occur during the data ...

  12. Qualitative Data Analysis Methods: Top 6 + Examples

    QDA Method #1: Qualitative Content Analysis. Content analysis is possibly the most common and straightforward QDA method. At the simplest level, content analysis is used to evaluate patterns within a piece of content (for example, words, phrases or images) or across multiple pieces of content or sources of communication. For example, a collection of newspaper articles or political speeches.

  13. PDF Developing a Quantitative Data Analysis Plan

    A Data Analysis Plan (DAP) is about putting thoughts into a plan of action. Research questions are often framed broadly and need to be clarified and funnelled down into testable hypotheses and action steps. The DAP provides an opportunity for input from collaborators and provides a platform for training. Having a clear plan of action is also ...

  14. How to Write a Research Proposal

    Research proposal examples. Writing a research proposal can be quite challenging, but a good starting point could be to look at some examples. We've included a few for you below. Example research proposal #1: 'A Conceptual Framework for Scheduling Constraint Management'.

  15. How To Write A Research Proposal

    Include any additional supporting materials, such as survey questionnaires, interview guides, or data analysis plans. Research Proposal Format. The format of a research proposal may vary depending on the specific requirements of the institution or funding agency. However, the following is a commonly used format for a research proposal: 1. Title ...

  16. 17 Research Proposal Examples (2024)

    Research Proposal Examples. Research proposals often extend anywhere between 2,000 and 15,000 words in length. The following snippets are samples designed to briefly demonstrate what might be discussed in each section. ... - Outline the data analysis techniques (e.g., statistical analysis, thematic analysis) - Outline your validity and ...

  17. Summary and Synthesis: How to Present a Research Proposal

    A research proposal is generally meant to be presented by an investigator to request an agency or a body to support research work in the form of grants. ... The present proposal will use methods used for longitudinal data analysis. The researcher should justify the benefit of these methods over the previous statistical methods ...

  18. Data Analysis Plan: Examples & Templates

    A data analysis plan is a roadmap for how you're going to organize and analyze your survey data—and it should help you achieve three objectives that relate to the goal you set before you started your survey: Answer your top research questions. Use more specific survey questions to understand those answers. Segment survey respondents to ...

  19. Data Analysis in Quantitative Research Proposal

    Definition of Data Analysis. Data analysis in quantitative research proposal is one part of the chapter that researchers need in the beginning of writing a research proposal. Whereas in the research, it is an activity after the data from all collected. Activities in data analysis are: grouping data based on variables and types of respondents ...

  20. How to write a research proposal?

    Data analysis . This section deals with the reduction and reconstruction of data and its analysis including sample size calculation. The researcher is expected to explain the steps adopted for coding and sorting the data obtained. Various tests to be used to analyse the data for its robustness, significance should be clearly stated.

  21. Data Analysis Research Proposal Examples That Really Inspire

    Data Analysis Of Grief And Nursing Research Proposal. Data analysis is the process of organizing, transforming, and systematizing data into valuable information. It involves the use of different types of softwares to convert these data into information. Some of the software used include the SPSS and the Epi 7.

  22. PDF WRITING AN EFFECTIVE RESEARCH PROPOSAL

    The investigator specifies the maximum discrepancy between the sample and population proportion of ± 5%. To determine the sample size, the investigator would use the formula. n = (z/p)2π(1-π), n = the required sample size. p = the desired maximum discrepancy (i.e. ± 5%) π = the population proportion.

  23. The Research Proposal: Analysing Data

    The Research Proposal: Analysing Data. Introduction. This chapter is linked to the analysing data section of the web program. As well as describing how you intend collecting the data for your research study in your research proposal, you need to state how you will analyse the data. The problem is that 'raw' data on their own are meaningless ...