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

Learning Bayesian Statistics

NOTE

Embrace Informative Priors for Reliable Results

Using uninformative priors in Bayesian modeling can lead to unreliable and biased results, despite the simplicity of a straightforward execution. It is crucial to incorporate informative priors based on existing knowledge and understanding, as they enhance model accuracy and reduce the risk of miscalculations. Balancing objectivity and informed decision-making ensures that models are not only operational but also meaningful, as the implications of model outcomes can directly impact financial results. Acknowledging that users often prefer ease in model application, educating them on the importance of thoughtful prior selection can significantly improve modeling outcomes.

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