Transcription of Introduction to log-linear models
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' $. Stat 504, Lecture 16 1. Introduction to log- linear models Key Concepts: Benefits of models Two-way Log- linear models Parameters Constraints, Estimation and Interpretation Inference for log- linear models Objectives: Understand the structure of the log- linear models in two-way tables Understand the concepts of independence and associations described via log- linear models in two-way tables & %. ' $. Stat 504, Lecture 16 2. Useful Links: The CATMOD procedure in SAS: The GENMOD procedure in SAS: The SAS source on log- linear model analysis #stat_catmod_catmodllma Fitting Log- linear models in R. Fitting Log- linear models in R via generalized linear models (glm()). Readings: Agresti (2002) Ch. 8, 9. Agresti (1996) Ch. 6, 7. & %. ' $. Stat 504, Lecture 16 3. Benefits of models over significance tests Thus far our focus has been on describing interactions or associations between two or three categorical variables mostly via single summary statistics and with significance testing.
Introduction to log-linear models Key Concepts: • Benefits of models • Two-way Log-linear models • Parameters Constraints, Estimation and Interpretation • Inference for log-linear models Objectives: • Understand the structure of the log-linear models in two-way tables • Understand the concepts of independence and
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Introduction to Generalized Linear Models, Introduction Generalized Linear Models, Linear, Longitudinal, Models, Linear models, Introduction, Generalized linear models, Introduction to Generalized Linear Mixed Models, Generalized linear, Generalized, Optimization Methods in Finance, Generalized estimating, Introduction to Inverse Problems, MIT OpenCourseWare