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Markov Chain Sampling Methods for Dirichlet Process Mixture Models
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Citations
12
References
2000
Year
Bayesian StatisticBayesian StatisticsBayesian Decision TheoryEngineeringMixture DistributionData SciencePosterior DistributionGibbs MeasureBayesian EconometricsAuxiliary ParametersStatistical InferenceProbability TheoryBayesian MethodsMarkov Chain MethodsPublic HealthMarkov Chain Monte CarloStatisticsBayesian Hierarchical Modeling
Abstract This article reviews Markov chain methods for sampling from the posterior distribution of a Dirichlet process mixture model and presents two new classes of methods. One new approach is to make Metropolis—Hastings updates of the indicators specifying which mixture component is associated with each observation, perhaps supplemented with a partial form of Gibbs sampling. The other new approach extends Gibbs sampling for these indicators by using a set of auxiliary parameters. These methods are simple to implement and are more efficient than previous ways of handling general Dirichlet process mixture models with non-conjugate priors.
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