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Adjunct Instructor: GPH-GU 2480/3480 Longitudinal Analysis of Public Health Data
New York University
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New York, United States
Location
New York
Posted
June 20, 2026
Commute
Local Area
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Job Description
Position: Adjunct Instructor
Course: GPH-GU 2480/3480 Longitudinal Analysis of Public Health Data ( Syllabus) (https://drive.google.com/file/d/1NhNj9ti6UsmouMk2SVIxPpQDy-Lc1vTi/view?usp=sharing)
Department: NYU School of Global Public Health - Biostatistics
Supervisor: Dr. Rebecca Betensky
Employment Dates: Spring 2026
This course covers modern methods for the analysis of repeated measures, correlated outcomes, and longitudinal data, including the unbalanced and incomplete data that are characteristic of public health research. There are four widely available methods for dealing with dependence: robust standard errors, generalized estimating equations, random effects models, and fixed effects models. This course examines each of these methods in some detail, with an eye to discerning their relative advantages and disadvantages. Different methods are considered for quantitative outcomes and categorical outcomes. The course uses Stata statistical softw...
Course: GPH-GU 2480/3480 Longitudinal Analysis of Public Health Data ( Syllabus) (https://drive.google.com/file/d/1NhNj9ti6UsmouMk2SVIxPpQDy-Lc1vTi/view?usp=sharing)
Department: NYU School of Global Public Health - Biostatistics
Supervisor: Dr. Rebecca Betensky
Employment Dates: Spring 2026
This course covers modern methods for the analysis of repeated measures, correlated outcomes, and longitudinal data, including the unbalanced and incomplete data that are characteristic of public health research. There are four widely available methods for dealing with dependence: robust standard errors, generalized estimating equations, random effects models, and fixed effects models. This course examines each of these methods in some detail, with an eye to discerning their relative advantages and disadvantages. Different methods are considered for quantitative outcomes and categorical outcomes. The course uses Stata statistical softw...