SURV706

General Linear Models

Recommended: Sound understanding of Linear Regression Models, Calculus and Linear Algebra. Restriction: Must have permission of BSOS-Joint Program in Survey Methodology. Credit only granted for: SURV706 or SURV699J. Formerly: SURV699J. The main focus of this course lies on the introduction to statistical models and estimators beyond linear regression useful to social and economic scientists. It provides an overview of generalized linear models (GLM) that encompass non-normal response distributions to model functions of the mean. GLMs thus relate the expected mean E(Y) of the dependent variable to the predictor variables via a specific link function. This link function permits the expected mean to be non-linearly related to the predictor variables. Examples for GLMs are the logistic regression, regressions for ordinal data, or regression models for count data. GLMs are generally estimated by use of maximum likelihood estimation. The course thus not only introduces GLMs but starts with an introduction to the principle of maximum likelihood estimation.

Fall 2024

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Fall 2023

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Past Semesters

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* "W"s are considered to be 0.0 quality points. "Other" grades are not factored into GPA calculation. Grade data not guaranteed to be correct.