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On Bayesian Analysis of Mixtures with an Unknown Number of Components (with discussion)
Authors:Sylvia. Richardson,&   Peter J. Green
Affiliation:Institut National de la Santéet de la Recherche Médicale, Villejuif, France,;University of Bristol, UK
Abstract:New methodology for fully Bayesian mixture analysis is developed, making use of reversible jump Markov chain Monte Carlo methods that are capable of jumping between the parameter subspaces corresponding to different numbers of components in the mixture. A sample from the full joint distribution of all unknown variables is thereby generated, and this can be used as a basis for a thorough presentation of many aspects of the posterior distribution. The methodology is applied here to the analysis of univariate normal mixtures, using a hierarchical prior model that offers an approach to dealing with weak prior information while avoiding the mathematical pitfalls of using improper priors in the mixture context.
Keywords:Birth-and-death process    Classification    Galaxy data    Heterogeneity    Lake acidity data    Markov chain Monte Carlo method    Normal mixtures    Predictive distribution    Reversible jump algorithms    Sensitivity analysis
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