Advanced Signal Processing
Bayesian model selection is a statistical method that uses Bayesian principles to compare different models and choose the one that best explains the observed data. This approach incorporates prior beliefs about model parameters and evaluates how well each model fits the data while accounting for model complexity. By applying Bayes' theorem, it quantifies the trade-off between the goodness of fit and the simplicity of models, allowing for more informed decisions in selecting models.
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