This course focuses on the GLIMMIX procedure, a procedure for fitting generalized linear mixed models.
Learn how to
- analyze binomial data with random effects
- fit a Poisson regression model and a beta regression model with and without random effects
- analyze repeated measures data with discrete outcomes
- perform post-processing analysis
- use the EFFECT statement to define customized model effects
- jointly model multivariate responses with different distributions
- deal with convergence issues.
Who should attend
Analysts, statisticians, and researchers
Before attending this course, you should have taken
Previous exposure to matrix algebra will enhance your understanding of the material.
This course addresses SAS/STAT software.