Data Science Statistics
Bayesian model selection is a statistical method used to compare and choose among different models based on their likelihood given the observed data, incorporating prior beliefs about the models. This approach is rooted in Bayes' theorem, which updates the probability of a hypothesis as more evidence or information becomes available. It provides a coherent framework for model comparison by calculating the posterior probabilities of models and allowing for uncertainty in model selection.
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