MCMC Estimation of Classical and Dynamic Switching and Mixture Models

In the present paper we discuss Bayesian estimation of a very general model class where the distribution of the observations is assumed to depend on a latent mixture or switching variable taking values in a discrete state space. This model class covers e.g. finite mixture modelling, Markov switching...

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Main Author: Frühwirth-Schnatter, Sylvia
Format: Others
Language:en
Published: Department of Statistics and Mathematics, WU Vienna University of Economics and Business 1998
Subjects:
Online Access:http://epub.wu.ac.at/698/1/document.pdf
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spelling ndltd-VIENNA-oai-epub.wu-wien.ac.at-epub-wu-01_a372015-05-19T05:25:32Z MCMC Estimation of Classical and Dynamic Switching and Mixture Models Frühwirth-Schnatter, Sylvia Bayesian analysis / dynamic linear models / Markov Chain Monte Carlo methods / Markov switching models / finite mixture models In the present paper we discuss Bayesian estimation of a very general model class where the distribution of the observations is assumed to depend on a latent mixture or switching variable taking values in a discrete state space. This model class covers e.g. finite mixture modelling, Markov switching autoregressive modelling and dynamic linear models with switching. Joint Bayesian estimation of all latent variables, model parameters and parameters determining the probability law of the switching variable is carried out by a new Markov Chain Monte Carlo method called permutation sampling. Estimation of switching and mixture models is known to be faced with identifiability problems as switching and mixture are identifiable only up to permutations of the indices of the states. For a Bayesian analysis the posterior has to be constrained in such a way that identifiablity constraints are fulfilled. The permutation sampler is designed to sample efficiently from the constrained posterior, by first sampling from the unconstrained posterior - which often can be done in a convenient multimove manner - and then by applying a suitable permutation, if the identifiability constraint is violated. We present simple conditions on the prior which ensure that this method is a valid Markov Chain Monte Carlo method (that is invariance, irreducibility and aperiodicity hold). Three case studies are presented, including finite mixture modelling of fetal lamb data, Markov switching Autoregressive modelling of the U.S. quarterly real GDP data, and modelling the U .S./U.K. real exchange rate by a dynamic linear model with Markov switching heteroscedasticity. (author's abstract) Department of Statistics and Mathematics, WU Vienna University of Economics and Business 1998 Paper NonPeerReviewed en application/pdf http://epub.wu.ac.at/698/1/document.pdf Series: Forschungsberichte / Institut für Statistik http://epub.wu.ac.at/698/
collection NDLTD
language en
format Others
sources NDLTD
topic Bayesian analysis / dynamic linear models / Markov Chain Monte Carlo methods / Markov switching models / finite mixture models
spellingShingle Bayesian analysis / dynamic linear models / Markov Chain Monte Carlo methods / Markov switching models / finite mixture models
Frühwirth-Schnatter, Sylvia
MCMC Estimation of Classical and Dynamic Switching and Mixture Models
description In the present paper we discuss Bayesian estimation of a very general model class where the distribution of the observations is assumed to depend on a latent mixture or switching variable taking values in a discrete state space. This model class covers e.g. finite mixture modelling, Markov switching autoregressive modelling and dynamic linear models with switching. Joint Bayesian estimation of all latent variables, model parameters and parameters determining the probability law of the switching variable is carried out by a new Markov Chain Monte Carlo method called permutation sampling. Estimation of switching and mixture models is known to be faced with identifiability problems as switching and mixture are identifiable only up to permutations of the indices of the states. For a Bayesian analysis the posterior has to be constrained in such a way that identifiablity constraints are fulfilled. The permutation sampler is designed to sample efficiently from the constrained posterior, by first sampling from the unconstrained posterior - which often can be done in a convenient multimove manner - and then by applying a suitable permutation, if the identifiability constraint is violated. We present simple conditions on the prior which ensure that this method is a valid Markov Chain Monte Carlo method (that is invariance, irreducibility and aperiodicity hold). Three case studies are presented, including finite mixture modelling of fetal lamb data, Markov switching Autoregressive modelling of the U.S. quarterly real GDP data, and modelling the U .S./U.K. real exchange rate by a dynamic linear model with Markov switching heteroscedasticity. (author's abstract) === Series: Forschungsberichte / Institut für Statistik
author Frühwirth-Schnatter, Sylvia
author_facet Frühwirth-Schnatter, Sylvia
author_sort Frühwirth-Schnatter, Sylvia
title MCMC Estimation of Classical and Dynamic Switching and Mixture Models
title_short MCMC Estimation of Classical and Dynamic Switching and Mixture Models
title_full MCMC Estimation of Classical and Dynamic Switching and Mixture Models
title_fullStr MCMC Estimation of Classical and Dynamic Switching and Mixture Models
title_full_unstemmed MCMC Estimation of Classical and Dynamic Switching and Mixture Models
title_sort mcmc estimation of classical and dynamic switching and mixture models
publisher Department of Statistics and Mathematics, WU Vienna University of Economics and Business
publishDate 1998
url http://epub.wu.ac.at/698/1/document.pdf
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