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#102 Bayesian Structural Equation Modeling & Causal Inference in Psychometrics, with Ed Merkle

Learning Bayesian Statistics

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Bayesian Structural Equation Modeling in Psychometrics

The chapter explores the guest's journey and enthusiasm for Bayesian applications in psychometric models, highlighting the challenges and progress in the field. It discusses Bayesian structural equation modeling (BSEM) and its significance in psychometrics, emphasizing its intersection with various modeling techniques like item response models and factor analysis models. The conversation also delves into the benefits of approaching models from a Bayesian perspective, emphasizing the intuitive understanding it provides for variable interactions and predictions compared to the frequentist viewpoint.

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