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Bayesian Posterior Comprehension via Message from Monte Carlo

Leigh J. Fitzgibbon, David L. Dowe and Lloyd Allison
School of Computer Science and Software Engineering
Monash University, Clayton, VIC 3800, Australia
{leighf,dld,lloyd}@bruce.csse.monash.edu.au

Abstract:

We discuss the problem of producing an epitome, or brief summary, of a Bayesian posterior distribution - and then investigate a general solution based on the Minimum Message Length (MML) principle. Clearly, the optimal criterion for choosing such an epitome is determined by the epitome's intended use. The interesting general case is where this use is unknown since, in order to be practical, the choice of epitome criterion becomes subjective. We identify a number of desirable properties that an epitome could have - facilitation of point estimation, human comprehension, and fast approximation of posterior expectations. We call these the properties of Bayesian Posterior Comprehension and show that the Minimum Message Length principle can be viewed as an epitome criterion that produces epitomes having these properties. We then present and extend Message from Monte Carlo as a means for constructing instantaneous Minimum Message Length codebooks (and epitomes) using Markov Chain Monte Carlo methods. The Message from Monte Carlo methodology is illustrated for binary regression, generalised linear model, and multiple change-point problems.

Keywords: Bayesian, Minimum Message Length, MML, MCMC, RJMCMC, Message from Monte Carlo, MMC, posterior summary, epitome, Bayesian Posterior Comprehension




next up previous
Next: Introduction
2003-04-23