Publication | Closed Access
Modelling Heterogeneity With and Without the Dirichlet Process
279
Citations
14
References
2001
Year
Bayesian StatisticBayesian Decision TheoryEngineeringBayesian EconometricsMarkov Chain Monte CarloStochastic SimulationHeterogeneous ModelingStochastic ProcessesBayesian MethodsPublic HealthDirichlet ProcessStatisticsBayesian Hierarchical ModelingNew Sampler RelativeDirichlet FormProbability TheoryFunctional Data AnalysisNew Mcmc SamplerStochastic ModelingBayesian StatisticsMixture DistributionStatistical Inference
We investigate the relationships between Dirichlet process (DP) based models and allocation models for a variable number of components, based on exchangeable distributions. It is shown that the DP partition distribution is a limiting case of a Dirichlet–multinomial allocation model. Comparisons of posterior performance of DP and allocation models are made in the Bayesian paradigm and illustrated in the context of univariate mixture models. It is shown in particular that the unbalancedness of the allocation distribution, present in the prior DP model, persists a posteriori . Exploiting the model connections, a new MCMC sampler for general DP based models is introduced, which uses split/merge moves in a reversible jump framework. Performance of this new sampler relative to that of some traditional samplers for DP processes is then explored.
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