Bayesian inference in hidden Markov models through the reversible jump Markov chain Monte Carlo method |
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Authors: | C. P. Robert,T. Rydé n,& D. M. Titterington |
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Affiliation: | Centre de Recherche en Economie et Statistique, Paris, France,;Lund University, Sweden,;University of Glasgow, UK |
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Abstract: | Hidden Markov models form an extension of mixture models which provides a flexible class of models exhibiting dependence and a possibly large degree of variability. We show how reversible jump Markov chain Monte Carlo techniques can be used to estimate the parameters as well as the number of components of a hidden Markov model in a Bayesian framework. We employ a mixture of zero-mean normal distributions as our main example and apply this model to three sets of data from finance, meteorology and geomagnetism. |
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Keywords: | Bayesian inference Hidden Markov model Markov chain Monte Carlo methods Model selection |
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