We propose an estimation method that circumvents the path dependence problem existing in Change-Point (CP) and Markov Switching (MS) ARMA models. Our model embeds a sticky infinite hidden Markov-switching structure (sticky IHMM), which makes possible a self-determination of the number of regimes as well as of the specification : CP or MS. Furthermore, CP and MS frameworks usually assume that all the model parameters vary from one regime to another. We relax this restrictive assumption. As illustrated by simulations on moderate samples (300 observations), the sticky IHMM-ARMA algorithm detects which model parameters change over time. Applications to the U.S. GDP growth and the DJIA realized volatility highlight the relevance of estimating di...
Markov switching models are a family of models that introduces time variation in the parameters in t...
Dynamic volatility and correlation models with fixed parameters are restrictive for time series subj...
In this paper, we consider the estimation of time-varying ARMA models subject to Markovian changes i...
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...
We propose an estimation method that circumvents the path dependence problem existing in Change-Poin...
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...
Markov-switching models are usually specified under the assumption that all the parameters change wh...
<p>Markov-switching models are usually specified under the assumption that all the parameters change...
We study model selection issues and some extensions of Markov switching models. We establish both th...
In this paper we propose a general component-driven model to analyze economic data with different ch...
Dynamic models with parameters that are allowed to depend on the state of a hidden Markov chain have...
Regime Switching models, especially Markov switching models, are regarded as a promising way to capt...
This paper proposes an infinite dimension Markov switching model to accommo-date regime switching an...
Markov switching models are a family of models that introduces time variation in the parameters in t...
Dynamic volatility and correlation models with fixed parameters are restrictive for time series subj...
In this paper, we consider the estimation of time-varying ARMA models subject to Markovian changes i...
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...
We propose an estimation method that circumvents the path dependence problem existing in Change-Poin...
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...
Markov-switching models are usually specified under the assumption that all the parameters change wh...
<p>Markov-switching models are usually specified under the assumption that all the parameters change...
We study model selection issues and some extensions of Markov switching models. We establish both th...
In this paper we propose a general component-driven model to analyze economic data with different ch...
Dynamic models with parameters that are allowed to depend on the state of a hidden Markov chain have...
Regime Switching models, especially Markov switching models, are regarded as a promising way to capt...
This paper proposes an infinite dimension Markov switching model to accommo-date regime switching an...
Markov switching models are a family of models that introduces time variation in the parameters in t...
Dynamic volatility and correlation models with fixed parameters are restrictive for time series subj...
In this paper, we consider the estimation of time-varying ARMA models subject to Markovian changes i...