Dynamic models with parameters that are allowed to depend on the state of a hidden Markov chain have become a popular tool for modelling time series subject to changes in regime. An important question that arises in applications involving such models is how to determine the number of states required for the model to be an adequate characterization of the observed data. In this paper, we investigate the properties of alternative procedures that can be used to determine the state dimension of a Markov‐switching autoregressive model. These include procedures that exploit the ARMA representation which Markov‐switching processes admit, as well as procedures that are based on optimization of complexity‐penalized likelihood measures. Our Monte Car...
This paper considers maximum likelihood (ML) estimation in a large class of models with hidden Marko...
We propose an estimation method that circumvents the path dependence problem existing in Change-Poin...
We propose an estimation method that circumvents the path dependence problem existing in Change-Poin...
This paper is concerned with the problem of joint determination of the state dimension and autoregre...
This paper is concerned with the problem of joint determination of the state dimension and autoregre...
We study model selection issues and some extensions of Markov switching models. We establish both th...
We show that the covariance function of a second-order stationary vector Markov regime switching tim...
We show that the covariance function of a second-order stationary vector Markov regime switching tim...
We give stable finite-order vector autoregressive moving average (p*; q*) representations for M-stat...
We give stable finite-order vector autoregressive moving average (p*; q*) representations for M-stat...
Markov switching models are a family of models that introduces time variation in the parameters in t...
We show that the covariance function of a second-order stationary vector Markov regime switching tim...
Change-point (CP) and Markov-switching (MS) Auto-regressive models have been intensively discussed o...
Change-point (CP) and Markov-switching (MS) Auto-regressive models have been intensively discussed o...
We propose an estimation method that circumvents the path dependence problem existing in Change-Poin...
This paper considers maximum likelihood (ML) estimation in a large class of models with hidden Marko...
We propose an estimation method that circumvents the path dependence problem existing in Change-Poin...
We propose an estimation method that circumvents the path dependence problem existing in Change-Poin...
This paper is concerned with the problem of joint determination of the state dimension and autoregre...
This paper is concerned with the problem of joint determination of the state dimension and autoregre...
We study model selection issues and some extensions of Markov switching models. We establish both th...
We show that the covariance function of a second-order stationary vector Markov regime switching tim...
We show that the covariance function of a second-order stationary vector Markov regime switching tim...
We give stable finite-order vector autoregressive moving average (p*; q*) representations for M-stat...
We give stable finite-order vector autoregressive moving average (p*; q*) representations for M-stat...
Markov switching models are a family of models that introduces time variation in the parameters in t...
We show that the covariance function of a second-order stationary vector Markov regime switching tim...
Change-point (CP) and Markov-switching (MS) Auto-regressive models have been intensively discussed o...
Change-point (CP) and Markov-switching (MS) Auto-regressive models have been intensively discussed o...
We propose an estimation method that circumvents the path dependence problem existing in Change-Poin...
This paper considers maximum likelihood (ML) estimation in a large class of models with hidden Marko...
We propose an estimation method that circumvents the path dependence problem existing in Change-Poin...
We propose an estimation method that circumvents the path dependence problem existing in Change-Poin...