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A Generalized Markov Sampler
Authors:Keith  Jonathan M  Kroese  Dirk P  Bryant  Darryn
Institution:(1) Department of Mathematics, University of Queensland, Brisbane, 4072, Australia
Abstract:A recent development of the Markov chain Monte Carlo (MCMC) technique is the emergence of MCMC samplers that allow transitions between different models. Such samplers make possible a range of computational tasks involving models, including model selection, model evaluation, model averaging and hypothesis testing. An example of this type of sampler is the reversible jump MCMC sampler, which is a generalization of the Metropolis–Hastings algorithm. Here, we present a new MCMC sampler of this type. The new sampler is a generalization of the Gibbs sampler, but somewhat surprisingly, it also turns out to encompass as particular cases all of the well-known MCMC samplers, including those of Metropolis, Barker, and Hastings. Moreover, the new sampler generalizes the reversible jump MCMC. It therefore appears to be a very general framework for MCMC sampling. This paper describes the new sampler and illustrates its use in three applications in Computational Biology, specifically determination of consensus sequences, phylogenetic inference and delineation of isochores via multiple change-point analysis.
Keywords:model determination  Markov chain Monte Carlo  Gibbs sampler  simulated annealing  string sampler  consensus sequence  phylogenetic inference  isochores  multiple change-point analysis
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