Bayesian Model Selection
Bayesian model selection uses the rules of probability theory to select among different hypotheses. It is completely analogous to Bayesian classification. It automatically encodes a preference for simpler, more constrained models, as illustrated at right. Simple models, e.g. linear regression, only fit a small fraction of data sets. But they assign correspondingly higher probability to those data sets. Flexible models spread themselves out more thinly.