Bayesian Statistics
Bayesian model selection is a statistical method used to choose among different models based on their posterior probabilities, which are updated using observed data. This approach incorporates prior beliefs about the models and quantifies uncertainty in the model selection process, making it particularly powerful in cases where multiple competing models exist. By evaluating the evidence provided by the data for each model, Bayesian model selection helps to identify the most appropriate model for the underlying process being studied.
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