Bayesian model comparison Guide, Meaning , Facts, Information and Description
The posterior probability of a model given data, P(H|D), is given by Bayes' theorem:- P(H|D) = P(D|H)P(H)/P(D)
The evidence is usually the normalizing constant or partition function of another inference, namely the inference of the parameters of model H given the data D.
The plausibility of two different models H1 and H2, parametrised by model parameter vectors and is assessed by the Bayes factor given by
References
- Gelman, A., Carlin, J.,Stern, H. and Rubin, D. Bayesian Data Analysis. Chapman and Hall/CRC.(1995)
- Bernardo, J., and Smith, A.F.M., Bayesian Theory. John Wiley. (1994)
- Lee, P.M. Bayesian Statistics. Arnold.(1989).
- Denison, D.G.T., Holmes, C.C., Mallick, B.K., Smith, A.F.M., Bayesian Methods for Nonlinear Classification and Regression. John Wiley. (2002).
- Richard O. Duda, Peter E. Hart, David G. Stork (2000) Pattern classification (2nd edition), Section 9.6.5, p. 487-489, Wiley, ISBN 0471056693
- Chapter 24 in Probability Theory - The logic of science by E. T. Jaynes, 1994.
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