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Clustering Categorical Time Series into Unknown Number of Clusters: A Perfect Simulation based Approach (1311.2422v1)

Published 11 Nov 2013 in stat.ME

Abstract: Pamminger and Fruwirth-Schnatter (2010) considered a Bayesian approach to model-based clustering of categorical time series assuming a fixed number of clusters. But the popular methods for selecting the number of clusters, for example, the Bayes Information Criterion (BIC), turned out to have severe problems in the categorical time series context. In this paper, we circumvent the difficulties of choosing the number of clusters by adopting the Bayesian semiparametric mixture model approach introduced by Bhattacharya (2008), who assume that the number of clusters is a random quantity, but is bounded above by a (possibly large) number of clusters. We adopt the perfect simulation approach of Mukhopadhyay and Bhattacharya (2012) for posterior simulation for completely solving the problems of convergence of the underlying Markov chain Monte Carlo (MCMC) approach. Importantly, within our main perfect simulation algorithm, there arose the necessity to simulate perfectly from the joint distribution of a set of continuous random variables with log-concave full conditional densities. We propose and develop a novel and efficient perfect simulation methodology for joint distributions with log-concave full conditionals. This perfect sampling methodology is of independent interest as well since in a very large and important class of Bayesian applications the full conditionals turn out to be log-concave. We will consider application of our model and methodology to the Austrian wage mobility data, also analysed by Pamminger and Fruwirth-Schnatter (2010), and adopting the methods developed in Mukhopadhyay et al. (2011), Mukhopadhyay et al. (2012), will obtain the posterior modes of clusterings and also the desired highest posterior distribution credible regions of the posterior distribution of clusterings.

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