Markov switching models are a family of models that introduces time variation in the parameters in the form of their state, or regime-specific values. This time variation is governed by a latent discrete-valued stochastic process with limited memory. More specifically, the current value of the state indicator is determined by the value of the state indicator from the previous period only implying the Markov property. A transition matrix characterizes the properties of the Markov process by determining with what probability each of the states can be visited next period conditionally on the state in the current period. This setup decides on the two main advantages of the Markov switching models: the estimation of the probability of state occu...
This paper introduces a Bayesian Markov regime-switching model that allows the cointegration relatio...
I develop methods to analyze multivariate Markov-switching models. Formulas for the evolution of rst...
This dissertation studies statistical properties and applications of the Markov switching models for...
Markov switching models are a popular family of models that introduces time-variation in the paramet...
We study model selection issues and some extensions of Markov switching models. We establish both th...
In many real phenomena the behaviour of a certain variable, subject to different regimes, depends on...
We adopt a regime switching approach to study concrete financial time series with particular emphasi...
Markov switching models are useful because of their ability to capture simple dynamics and important...
Dynamic volatility and correlation models with fixed parameters are restrictive for time series subj...
Research Paper Series (National University of Singapore. Faculty of Business Administration); 2003-0...
This paper proposes a model which allows for discrete stochastic breaks in the time-varying transiti...
We propose a new class of Markov-switching (MS) models for business cycle analysis. As usually done ...
In this paper we point out that using a two-state Markov chain to describe change in regime makes it...
This article presents a new way of modeling time-varying volatility. We generalize the usual stochas...
Markov chain, Markov switching model, Hidden Markov model, Regime switching, Inference,
This paper introduces a Bayesian Markov regime-switching model that allows the cointegration relatio...
I develop methods to analyze multivariate Markov-switching models. Formulas for the evolution of rst...
This dissertation studies statistical properties and applications of the Markov switching models for...
Markov switching models are a popular family of models that introduces time-variation in the paramet...
We study model selection issues and some extensions of Markov switching models. We establish both th...
In many real phenomena the behaviour of a certain variable, subject to different regimes, depends on...
We adopt a regime switching approach to study concrete financial time series with particular emphasi...
Markov switching models are useful because of their ability to capture simple dynamics and important...
Dynamic volatility and correlation models with fixed parameters are restrictive for time series subj...
Research Paper Series (National University of Singapore. Faculty of Business Administration); 2003-0...
This paper proposes a model which allows for discrete stochastic breaks in the time-varying transiti...
We propose a new class of Markov-switching (MS) models for business cycle analysis. As usually done ...
In this paper we point out that using a two-state Markov chain to describe change in regime makes it...
This article presents a new way of modeling time-varying volatility. We generalize the usual stochas...
Markov chain, Markov switching model, Hidden Markov model, Regime switching, Inference,
This paper introduces a Bayesian Markov regime-switching model that allows the cointegration relatio...
I develop methods to analyze multivariate Markov-switching models. Formulas for the evolution of rst...
This dissertation studies statistical properties and applications of the Markov switching models for...