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#109 Prior Sensitivity Analysis, Overfitting & Model Selection, with Sonja Winter

Learning Bayesian Statistics

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Intro

This chapter explores the significance of selecting appropriate priors in the Bayesian framework, highlighting challenges such as prior sensitivity and overfitting. It provides practical insights into model selection in longitudinal data and structural equation modeling, enhancing listeners' grasp of Bayesian statistical techniques.

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