A Split-Merge Markov chain Monte Carlo Procedure for the Dirichlet Process Mixture Model

Volume: 13, Issue: 1, Pages: 158 - 182
Published: Mar 1, 2004
Abstract
This article proposes a split-merge Markov chain algorithm to address the problem of inefficient sampling for conjugate Dirichlet process mixture models. Traditional Markov chain Monte Carlo methods for Bayesian mixture models, such as Gibbs sampling, can become trapped in isolated modes corresponding to an inappropriate clustering of data points. This article describes a Metropolis-Hastings procedure that can escape such local modes by...
Paper Details
Title
A Split-Merge Markov chain Monte Carlo Procedure for the Dirichlet Process Mixture Model
Published Date
Mar 1, 2004
Volume
13
Issue
1
Pages
158 - 182
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