Bioinformatics
Bayesian model selection is a statistical method used to compare and choose among different models based on their posterior probabilities given observed data. It incorporates prior beliefs and the likelihood of the data under each model, enabling a probabilistic approach to model evaluation. This method is particularly useful in scenarios with complex models and uncertainty, as it helps to balance model fit and complexity.
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