Nonparametric Bayesian analysis for multi-site hidden Markov model.
- Resource Type
- Article
- Authors
- Kim, Dal Ho; Jo, Aejung; Kim, Yongku
- Source
- Communications in Statistics: Simulation & Computation. 2017, Vol. 46 Issue 6, p4896-4907. 12p.
- Subject
- *BAYESIAN analysis
*HIDDEN Markov models
*HIERARCHICAL Bayes model
*MULTIVARIATE analysis
*PROBABILITY theory
- Language
- ISSN
- 0361-0918
The hidden Markov model (HMM) provides an attractive framework for modeling long-term persistence in a variety of applications including pattern recognition. Unlike typical mixture models, hidden Markov states can represent the heterogeneity in data and it can be extended to a multivariate case using a hierarchical Bayesian approach. This article provides a nonparametric Bayesian modeling approach to the multi-site HMM by considering stick-breaking priors for each row of an infinite state transition matrix. This extension has many advantages over a parametric HMM. For example, it can provide more flexible information for identifying the structure of the HMM than parametric HMM analysis, such as the number of states in HMM. We exploit a simulation example and a real dataset to evaluate the proposed approach. [ABSTRACT FROM AUTHOR]