Quantitative Methods & Data Analytics for Human Behavior (M.S.)

Harness data. Measure impact. Drive decisions. 

In today’s data-rich world, professionals who can translate numbers into meaningful decisions are in high demand. Across industry and academia, quantitative methods, psychometric, and data analytics experts are needed to accelerate applied research by developing deep understanding of advanced analyses – how they work, why they work, and when they don’t. 

campus

Please note that our Quantitative Methods M.Ed. program has changed to the Quantitative Methods & Data Analytics for Human Behavior M.S. program. Anyone who applies and is admitted to start in Fall 2026 will be admitted to the new M.S. program.

Our Quantitative Methods & Data Analytics for Human Behavior (QMDA) M.S. provides students with the theoretical expertise and practical grounding needed to conduct data analyses with rigor, transparency, and confidence. Graduates of our M.S. program can become leaders in developing techniques for measuring human behavior, designing research studies, applying data analytics to real-world data, building models of complex behavioral processes, and evaluating efficacy of treatments. 

M.S. graduates learn to use AI to augment their data analytics productivity, but first learn to think critically about methods and results so they can use AI adeptly with integrity, not dangerously with risk and guesswork. 

Info Session

  • Nov. 19, 2025

    7:30 p.m. CST

    Quantitative Methods Info Session

    If you've identified an interest in Peabody's Quantitative Methods & Data Analytics for Human Behavior M.S. program (which was previously our Quantitative Methods M.Ed. program), we invite you to join us for a program information session taking place Wednesday, November 19 at 6:30 p.m. CT. 

    Dr. Shane Hutton, program director, will discuss updates to the program, as well as its structure and curriculum, career outcomes, application requirements and timeline, and will end the webinar with a Q&A with current students to discuss the Peabody and Quant Methods student experience. We encourage you to register to attend!

    The Quantitative Methods and Data Analytics for Human Behavior M.S. is a STEM-designated, campus-based program.

    Register Now

Quantitative Methods & Data Analytics Overview

In our flexible full-time or part-time program you will learn from renowned QMDA faculty members actively advancing the science of quantitative methods in order to master the conceptual foundations, theory, and application of quantitative analytics. In your internship, you will practice providing design, measurement, analytics, and statistical support while exploring or refining your specialization interests. Upon graduation, you will be equipped to skillfully apply, precisely justify and thoughtfully communicate about your advanced psychometric modeling and data analyses skills in health and medical settings; business, government and industry positions; dedicated research institutes; school systems; and other academic settings.

This program is a 33 credit-hour program that can be completed in 17 months (when the internship occurs during the summer after the second semester) or 22 months (if a student wishes to delay their internship until after their third semester). See the coursework section of this page for more information.

M.S. graduates of quantitative methods and data analytics programs are highly sought after for employment in research and data analytics settings such as:

  • healthcare analytics
  • medical school research
  • business analytics
  • psychometric assessment and testing companies
  • university research programs
  • industrial organizational research
  • government research laboratories
  • social/behavioral research laboratories
  • public school systems

Additionally, graduates of this program frequently elect to continue with doctoral studies in quantitative or applied fields. Many students have used our program to acquire strong quantitative training as a springboard before applying to a Ph.D. program in an applied or quantitative field. Graduates of our program have been accepted into Ph.D. programs at prestigious universities across the country.

Quantitative Research Careers

Quantitative analytics drives discovery and innovation in many of today’s most modern and exciting professions. Of Peabody’s job seeking quantitative methods graduates, 94% were employed or attending graduate school within four months of graduation.

Recent career placements include:

  • Biostatistician, Cleveland Clinic
  • Data Science Manager, Capital One Financial Services
  • Research Data Analyst, HCA Healthcare
  • Data Analyst, Tennessee Department of Health
  • Health Policy Analyst, Vanderbilt University Medical School
  • Artificial Intelligence Designer, 1st Edge
  • Statistical Research Analyst, Tennessee Department of Health
  • Quantitative Research Associate, Habitat for Humanity
  • Data Visualization Engineer, Dallas College
  • Statistical Programmer, RAND Corporation

"I would not be where I am today without every aspect of the Peabody experience."

Alumnus Yudong Cao, Data Science Manager, Capital One

Explore how to use research design and data analysis for the social good with our digital guidebook.

Quantitative Degree Program Facts

Program Director: Shane Hutton
Admissions Coordinator: Ally Jacobs
Admission Term: Fall
Credit Hours: 33

Application Deadlines

  • Priority Decision 1

    January 3*

  • Priority Decision 2

    February 3

  • Rolling Decision

    After February 3

*For more information on application dates and requirements, and the benefits of Priority Decision, see the How to Apply page.

Request Information

Quantitative Methods Program Curriculum

You will take three required core courses in Quantitative Methods & Data Analytics during the 33-hour program. Additionally, you will take one required hour of seminar activity, two required hours of internship activity and seven additional courses, one of which may be a content course outside the QMDA program, and one QMDA course outside of the Psychology and Human Development Department.

  • While most students attend the program full-time, a part-time option is offered where students are expected to enroll in at least one course per semester.

Coursework

  • Courses and Internship

    Required Courses: 9 hours

    You will be required to complete:

    • PSY-GS 8861 Statistical Inference
    • PSY-GS 8870 Regression and Predictive Analytics
    • PSY-GS 8878 Statistical Consulting Integrating AI

    Required Seminar Enrollment: 1 hour

    You must enroll in one hour for our research and professional development seminar series during your last semester, PSY-GS 8855 Quantitative Methods & Data Analytics Forum.

    Required Internship Enrollment: 2 hours

    All M.S. students must complete an internship, which is typically a two-month summer internship after the spring semester of their first year (providing a 17-month degree completion timetable) but, if a 22-month degree completion timetable is desired, the internship can occur during the fourth semester). The internship will take place in an applied research setting based on student interests, such as a research lab, a medical school setting, a testing company, a business/industry setting, a policy institute, or a school setting. The internship can involve a project from a student’s existing or newly-accepted job with permission of the PSY-PC 7982 instructor. Enrollment in 2 credit hours of PSY-PC 7982 Internship is required.

    • Partnerships: The Quantitative Methods program partners with multiple sites that afford internships, for instance, in health policy analytics at the Vanderbilt University Medical Center, marketing analytics at the Owen Graduate School of Management, and institutional analytics at the Vanderbilt Office of Data and Strategic Analytics.
    • Students can also define their own internship and have served as interns in a wide variety of other disciplines (including Computer Science, Engineering, Biostatistics, Epidemiology, Neuroscience, Education, and Psychology), government agencies, private and public companies, and non-profit organizations.
    • Additionally, students have the opportunity to identify a quantitative methods internship project related to methodological, data analytic, and/or statistical modeling/software aspects of an existing or newly accepted job, subject to the approval of the PSY-PC 7982 instructor.

    Elective Courses: 21 hours

    Of the seven 3-hour elective courses, at least five must come from within the Psychology and Human Development Quantitative Methods & Data Analytics curriculum, including:

    • PSY-GS 8873 Structural Equation Modeling (SEM)
    • PSY-GS 8876 Psychological Measurement
    • PSY-GS 8879 Factor Analysis
    • PSY-GS 8882 Multilevel Modeling
    • PSY-GS 8875 Behavioral Data Science
    • PSY-GS 8883 Applied Bayesian Analytics for Latent Variable Modeling
    • PSY-GS 8854 Survival Analysis
    • PSY-GS 8867 Multivariate Statistics for Data Science
    • PSY-GS 8880 Introduction to Item Response Theory
    • PSY-GS 8881 Advanced Item Response Theory
    • PSY-GS 8877 Nonparametric Analytics
    • PSY-GS 8874 Advanced Structural Equation Modeling
    • PSY-GS 8864 Analysis and Design of Experiments
    • PSY 8120 Categorical Data Analysis
    • PSY-GS 8889 Advanced Multilevel Modeling
    • PSY-GS 8888 Latent Growth Curve Modeling
    • PSY-GS 8751 Exploratory Data Analysis
    • PSY-GS 8885 Latent Class and Mixture Modeling

    Of the seven electives, one course can come from outside the QMDA program (e.g., from biostatistics, computer science, learning analytics, or from other quantitative methods offering within Peabody, such as Natural Language Processing, NLP or Meta-Analysis). One course can be a content course from within the Psychology Department (e.g. Neural Network Models of Cognitive Development; Computational Cognitive Modeling; or Research Methods in Clinical Psychology). 

"I believe Peabody excels at equipping students with the skills needed to be exceptional in their field after graduation."

Alumnus Stephen Robinson, Data Scientist for Aerospace Applications, Dynetics

Faculty

    No matches

    Quantitative Methods & Data Analytics Frequently Asked Questions

    • What is quantitative methods and data analytics for the study of human behavior?

      It is the use of statistics, measurement, and computation to study people and organizations. You learn to design studies, build valid measures, and analyze data to test ideas, make predictions, and evaluate programs. Methods and analytics include regression and predictive modeling, psychometrics, multilevel and longitudinal modeling, introductory and advanced structural equation modeling, introductory and advanced item response theory, machine learning, Bayesian approaches, network analysis, survival analysis, and experimental design. The goal is trustworthy answers that decision makers can use in research, healthcare, business, government, science, and education settings. AI-literacy is incorporated into our curriculum; you learn to use AI with care after you understand the methods so you can ensure that your results are accurate and carefully explained.

    • How is this different than a data science degree?

      Data science programs often focus more exclusively on coding, pipelines, and generic machine learning. While our program also covers such topics, we add a strong emphasis on how to quantify human behavior, test theoretically-driven hypotheses, and build statistical models to accurately reflect complex processes. If desired, you can build a data science emphasis in our program through QMDA courses like Behavioral Data Science, Multivariate Statistics for Data Science, and Statistical Consulting Integrating AI - plus a flexible internship in a setting you choose. The result is training that pairs sound study design and valid measurement with modern analytics.

    • How much coding is expected for a degree in quantitative methods, and in which languages or software?

      You will use coding in most courses, beginning in R and SAS for running analyses, but optionally expand into other software programs during elective courses and on internship. We start from the basics and provide labs, examples, and templates, so students without any coding background can succeed. If you want more depth, electives and internship opportunities let you spend extra time on data scraping/wrangling, statistical modeling, creating AI-enhanced analytics tools, and/or creating dashboards for user-visualization. The focus is on skillfully applying, precisely justifying, and carefully interpreting your advanced psychometric modeling and data analyses.

    • What are some examples of internships?

      Internships are flexible in topic, site, and timing. Students may also propose an internship at their current job with approval. Recent projects include: 

      • Evaluating Learning Assistants in large introductory STEM courses to test effects on students’ sense of belonging, self-efficacy, and science identity. 
      • Assessing depressive symptoms in autistic adults with item response theory and differential item functioning to detect item bias. 
      • Evaluating the Future FLO chatbot in nursing education by comparing its Gantt chart output to a default chatbot with AI and human review. 
      • Linking state policy indicators to maternal mental health with fixed effects and building a Shiny app for paid leave benefits. 
      • Modeling alcohol use and working memory over time with random intercept cross lagged panel models in twin data. 
      • Examining resource scarcity, competition, and permissible behavior using World Values Survey Wave 7 with principal component analysis and hierarchical regression. 
      • Identifying ICU mortality risk by inflammatory subphenotype with latent class analysis and Cox models. 
      • Estimating time to clinically significant change in outpatient therapy using discrete time survival analysis on PHQ 9 and GAD 7. 
      • Comparing liver and kidney markers for GLP 1 users versus DPP 4 users with propensity score matching and regression. 
      • Estimating long term effects of Tennessee’s Voluntary Pre-K on academic progress using four level multilevel growth curve models from a randomized trial subsample. 
    • Do I need prior research or industry experience?

      No. We start by covering the basics of study design, measurement, and analytics. Strong applicants show readiness through prior statistics or math coursework, class projects, or any experience working with data. The internship gives you real-world experience during the program, so you can build a portfolio before you graduate.

    • How flexible is the quantitative methods program?

      Very flexible. You can select seven electives with many options inside the QMDA program, and the opportunity to take relevant courses outside the department to match your goals. The internship is individually-tailored and flexible in topic and site, so you can target research, healthcare, business, policy, education, or science labs, for instance. You can follow a 17-month or 22-month full-time plan, or study part time.

    • What is unique about Quantitative Methods & Data Analytics?

      This program has a longstanding track-record of successfully placing graduates in their chosen industry settings or in competitive Ph.D. programs for over a decade. Students benefit from the resources and career networking associated with the highly-ranked Vanderbilt University. Students learn from a QMDA faculty that is among the largest in the country, works at the cutting edge of their field, and serves as editors of major methodological journals. The QMDA master’s program ensures that students acquire expertise in the combination of measurement, statistical modeling, data analytics, and AI-literacy. Another distinctive feature is a required internship that provides real-world experience in settings such as business, social and behavioral science, medicine, healthcare, policy, or education. Students benefit from strong connections established between the QMDA program and industry, medical, academic, and nonprofit partners. Students also responsibly learn to incorporate AI into their work after mastering the underlying methods so they can accurately justify their modeling choices and results with confidence. Finally, Vanderbilt’s QMDA program is situated in vibrant Nashville, which has been ranked #1 Best City to live in in the U.S., #1 American’s Favorite City, #3 Most Cultured City, one of the Most Walkable Cities in the U.S., #2 Best Big Airport, and #7 Best Food Destinations in the U.S. 

    • What skills and career opportunities will I gain from this program?

      You will build strong, practical skills in study design, measurement, predictive analytics, psychometric methods, and advanced statistical modeling, while mastering how to clearly and accurately communicate results. Through electives, the consulting course, and the internship, you will practice solving real-world analytics problems—building the solid foundation needed for critically evaluating and responsibly assessing future AI-accelerated workflows. Graduates step into and excel in roles such as data analyst, quantitative researcher, data scientist, psychometrician, statistical programmer, biostatistician, data visualization engineer—or enter competitive Ph.D. programs. Graduates work across healthcare, business, government, education, and research settings with recent placements at organizations like Cleveland Clinic, HCA Healthcare, Tennessee Department of Health, Capital One, RAND Corporation, Vanderbilt University Medical Center, Habitat for Humanity, etc. Many also continue to doctoral study, with alumni admitted to Ph.D. programs at Harvard, Notre Dame, UNC Chapel Hill, University of Maryland, Arizona State, University of Minnesota, and Michigan State, to name a few

    • How will I develop community in this program?

      You will learn in person with a tight-knit cohort and small classes, so you get to know peers and faculty well. The Quantitative Methods and Data Analytics Forum brings students together to share and gain feedback on ongoing work, hear speakers on state-of-the-art techniques, acquire professional development skills, and build professional connections. Team projects are involved in many QMDA courses including the Statistical Consulting Integrating AI class, which creates regular chances to collaborate. The internship adds another circle of mentors and colleagues in settings like healthcare, business, policy, science, or education. Electives across campus also connect you with students and faculty in related fields. 

    • Is the program STEM designated? What does it mean for international students?

      Yes. The M.S. in Quantitative Methods and Data Analytics for Human Behavior is a STEM-designated program, which allows eligible F-1 students to apply for 12 months of Optional Practical Training (OPT) after graduation, plus a 24-month STEM OPT extension—for up to 36 months of post-graduation work authorization in the United States. 

      Students may also gain authorized off-campus experience during the program through Curricular Practical Training (CPT), such as internships, applied projects, or external research that are integral to the curriculum. CPT eligibility typically begins after the first academic year. For detailed CPT/OPT procedures, forms, and advising, visit Vanderbilt International Student & Scholar Services (ISSS). 

    • What background is required to apply?

      A B.A. or equivalent undergraduate degree is required.

    • Are GRE scores required?

      No.

    • Can I apply if I do not have a degree in statistics?

      Yes. Students from all backgrounds have succeeded in our program and are welcome to apply. Students have entered our program with diverse backgrounds such as social/behavioral science, business, engineering, humanities, data science, medical/life sciences, education, computer science, physics, and public health, to name a few. Given the applied nature of the program, we encourage students with substantive interests that use quantitative methods and data analytics to apply.

    • How large is a typical cohort?

      10 to 12 students, which fosters a tight-knit, collaborative cohort environment.

    • What is a typical timeline for program completion?

      The program is typically completed in 17 months. Students who complete their internship during the summer between their first and second year can finish in 17 months and graduate in December. Some students choose to follow a 22-month timeline, completing their internship during the spring semester of their second year, and graduating in May. Still other students choose to complete the program on a part-time basis or enroll in our Early Start option which allows Vanderbilt students to start completing requirements while simultaneously finishing their undergraduate degree.

    • Are there any evening classes for working students?

      While the program offers some flexibility in coursework, most classes are scheduled during the morning and afternoon. Thus, for students holding concurrent jobs, this program is most compatible with ongoing employment that has a flexible, remote component or has evening/weekend/part-time hours.

    • Can I be in the program part time?

      Yes. Full time enrollment is defined as 9 credit hours per semester. Students wishing to enroll with fewer credits can work with the Program Director and the Graduate School to determine eligibility as well as implications for timeline, visa status for international students, and financial aid.

    • How can I fund my education?

      A number of assistantships, university positions, and community employment options are available to help students finance their studies. Additional information and strategies for managing expenses can be found on the financial resources page.