Apr 20, 2024  
Graduate Record 2022-2023 
    
Graduate Record 2022-2023 [ARCHIVED RECORD]

Quantitative Analytics in Education and the Social Sciences (MEd)


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The purpose of the MEd in Quantitative Analytics is to prepare students to use rigorous data analysis to inform and improve research, management, and policy decisions in education and the social sciences.

The program prepares students for research roles as applied data scientists in settings that involve working with large data sets to address questions of substantive importance. Students in the program will gain proficiency in: (1) managing and analyzing data, (2) constructing and interpreting research reports, (3) developing an understanding of measurement, survey, and research design, and (4) communicating analytic results and interpretations to broad audiences. Students will gain proficiency in these areas through course-based applications of these tools to actual research problems in education and the social sciences.

The program is designed to prepare students for work in school systems, state education departments, assessment/testing companies, state and federal governments, private companies, and other organizations in which data analytics play a role. This program is also useful for existing professionals looking to complement their existing work, and to prepare students looking to pursue more advanced training through completion of a doctorate degree in research methodology.


Curriculum Requirements


 

The Master of Education in Quantitative Analytics in Education and the Social Sciences is a 30-credit hour degree program. An independent capstone study or internship will be a required component of the 30 credit hours.

The curriculum is designed to provide students with prior statistics experience with a core foundation in advanced quantitative research and analysis in education and the social sciences. Students who need to acquire prerequisite statistical knowledge will complete the foundational course EDLF 5330 – Quantitative Methods and Data Analysis I or similar, before beginning the program.

The curriculum covers the core components of quantitative research design, analysis and assessment, with a focus on large sets of education and demographic data. Required courses will train students to analyze and understand large sets of data through course-based application of key analytics tools and software to real-world research problems. Throughout the core curriculum, course materials and class discussions will situate research questions and designs in an educational context, preparing students to understand and incorporate the needs of districts, schools, and educators in their analyses and recommendations. Students will be exposed to a variety of theoretical and philosophical conceptions of research designs, as well as readings and examples of various designs – e.g. cross-lagged designs, randomized control trials, and collecting survey data.  Students will learn to evaluate and apply suitable measurement, survey, and research designs, including tests and surveys. Coursework will educate students in the creation and management of large databases and prepare them to draft and interpret research reports and communicate analytics results and insights to broad audiences. The core curriculum will provide multiple opportunities for students to present their research findings in written and verbal forms, including presenting the results of their work in standard journal and popular press formats.

Restricted electives will provide students with additional breadth and depth in quantitative research and analysis, and education policy and assessment. A limited number of qualitative methods courses will be offered for students who want to incorporate these skills into their program of study. Students will select restricted electives in consultation with a faculty advisor, allowing them to pursue their interests and tailor the degree program to their personal career goals.

The required capstone will provide students with the opportunity to engage in an independent, semester-long research or internship study, through which they will integrate and apply their knowledge and skill in quantitative research design, assessment and analysis, and present their findings in a final paper.


Program Requirements


The Master of Education in Quantitative Analytics in Education and the Social Sciences is a 30-credit hour degree program

Core Courses: 12 credit hours

EDLF 5310 - Data Management for Social Science Research  (3 credits)

EDLF 7403 - Survey Design and Instrument Construction (3 credits)

EDLF 7420 - Quantitative Methods II: General Linear Models  (3 credits)

EDLF 7402 - Program Evaluation (3 credits) OR EDLF 7300 - Foundations of Educational Research (3 credits)

Advanced Modeling: 6-9 credit hours

EDLF 8310 - Generalized Linear Models  (3 credits)

EDLF 8360 - Multilevel Modeling in Education Research  (3 credits)

EDLF 8361 - Structural Equation Modeling  (3 credits)

Capstone Experience/Research Internship

EDLF 5993 - Independent Study  (3 credits) OR EDLF 5985 - Internship (3 credits)

Methodological Electives: 6-9 credit hours

EDLF 6080 - Education Policy  (3 credits)

EDLF 7330 - Single-Subject Research  (3 credits)

EDLF 7402 - Program Evaluation  (3 credits)

EDLF 7404 - Qualitative Analysis  (3 credits)

EDLF 7410 - Mixed Methods Research Design  (3 credits)

EDLF 8311 - Design and Analysis of Field Experiments  (3 credits)

EDLF 8315 - Causal Inference in Educational Policy Research  (3 credits)

Total: 30 credit hours

Description of Capstone Experience

Option 1: The student will work closely with a research mentor on original research or comprehensive literature review. This option is similar to writing a thesis, but on a smaller scale. The final paper should be about the same length as a manuscript written for a scholarly journal. If conducting original research, the student must make a significant contribution to the work, as determined by their research mentor, though the student need not be the sole contributor (i.e., lead author).

 

Option 2: The student will obtain an internship with an organization in which they can obtain practical experience in data analytics. A written agreement between the student, the advisor, and the sponsoring organization must be in place prior to beginning the internship experience. This agreement will document the relevance of the experience to data analytics and must be approved by all parties.