EFOP 3408 - HIERARCHICAL LINEAR MODELING Minimum Credits: 3 Maximum Credits: 3 This course is on hierarchical models for continuous and discrete outcomes. Hierarchical models are used when the units of observation are grouped within clusters. Observations in a cluster typically are not mutually independent for given covariate values as required by conventional linear and logistic regression models. Longitudinal or repeated measures data can also be thought of as clustered data with measurement occasions clustered within subjects. The focus of the course is on hierarchical linear models and their assumptions, as well as practical aspects of developing models to address research questions and interpreting the findings. Academic Career: Graduate Course Component: Lecture Grade Component: Grad LG/SU3 Basis Course Requirements: PREQ: PSYED 2410 or EFOP 2410 or PSYED 3410 Click here for class schedule information.
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