In the present paper we study switching state space models from a Bayesian point of view. For estimation, the model is reformulated as a hierarchical model. We discuss various MCMC methods for Bayesian estimation, among them unconstrained Gibbs sampling, constrained sampling and permutation sampling. We address in detail the problem of unidentifiability, and discuss potential information available from an unidentified model. Furthermore the paper discusses issues in model selection such as selecting the number of states or testing for the presence of Markov switching heterogeneity. The model likelihoods of all possible hypotheses are estimated by using the method of bridge sampling. We conclude the paper with applications to simulated data ...
Hidden Markov Models can be considered as an extension of mixture models, which allows for dependent...
We propose a new class of Markov-switching (MS) models for business cycle analysis. As usually done ...
We introduce a Bayesian discrete-time frame-work for switching-interaction analysis un-der uncertain...
We consider a time series model with autoregressive conditional heteroskedas-ticity that is subject ...
<p>Dynamic models, also termed state space models, comprise an extremely rich model class for time s...
We develop efficient simulation techniques for Bayesian inference on switching GARCH models. Our con...
This paper provides two Bayesian algorithms to efficiently estimate non-linear/non-Gaussian switchin...
Efficient simulation techniques for Bayesian inference on Markov-switching (MS) GARCH models are dev...
van Norden and Schaller (1996) develop a standard regime-switching model to study stock market crash...
We apply Harrison and Stevens\u27 (1976) state space model with switching to model additive outliers...
We develop a Markov-switching GARCH model (MS-GARCH) wherein the conditional mean and variance switc...
In the present paper we explore various approaches of computing model likelihoods from the MCMC outp...
This thesis is concerned with the stochastic modeling of and inference for switching biological syst...
This paper develops a Bayesian method for estimating and testing the parameters of the endogenous sw...
We study a Markov switching stochastic volatility model with heavy tail innovations in the observab...
Hidden Markov Models can be considered as an extension of mixture models, which allows for dependent...
We propose a new class of Markov-switching (MS) models for business cycle analysis. As usually done ...
We introduce a Bayesian discrete-time frame-work for switching-interaction analysis un-der uncertain...
We consider a time series model with autoregressive conditional heteroskedas-ticity that is subject ...
<p>Dynamic models, also termed state space models, comprise an extremely rich model class for time s...
We develop efficient simulation techniques for Bayesian inference on switching GARCH models. Our con...
This paper provides two Bayesian algorithms to efficiently estimate non-linear/non-Gaussian switchin...
Efficient simulation techniques for Bayesian inference on Markov-switching (MS) GARCH models are dev...
van Norden and Schaller (1996) develop a standard regime-switching model to study stock market crash...
We apply Harrison and Stevens\u27 (1976) state space model with switching to model additive outliers...
We develop a Markov-switching GARCH model (MS-GARCH) wherein the conditional mean and variance switc...
In the present paper we explore various approaches of computing model likelihoods from the MCMC outp...
This thesis is concerned with the stochastic modeling of and inference for switching biological syst...
This paper develops a Bayesian method for estimating and testing the parameters of the endogenous sw...
We study a Markov switching stochastic volatility model with heavy tail innovations in the observab...
Hidden Markov Models can be considered as an extension of mixture models, which allows for dependent...
We propose a new class of Markov-switching (MS) models for business cycle analysis. As usually done ...
We introduce a Bayesian discrete-time frame-work for switching-interaction analysis un-der uncertain...