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Mixture models, latent variables and partitioned importance sampling
Authors:George Casella  Christian P Robert  Martin T Wells  
Institution:

a Department of Statistics, University of Florida, Gainesville, FL 32611, USA

b Laboratoire de Statistique, Université Paris Dauphine, CREST, Insee, France

c Cornell University, Ithaca, NY 14851, USA

Abstract:Gibbs sampling has had great success in the analysis of mixture models. In particular, the “latent variable” formulation of the mixture model greatly reduces computational complexity. However, one failing of this approach is the possible existence of almost-absorbing states, called trapping states, as it may require an enormous number of iterations to escape from these states. Here we examine an alternative approach to estimation in mixture models, one based on a Rao–Blackwellization argument applied to a latent-variable-based estimator. From this derivation we construct an alternative Monte Carlo sampling scheme that avoids trapping states.
Keywords:Monte Carlo methods  Bayes estimation  Partition decomposition  Posterior probabilities  Gibbs sampling
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