textabstractWe propose a Bayesian infinite hidden Markov model to estimate time-varying parameters in a vector autoregressive model. The Markov structure allows for heterogeneity over time while accounting for state-persistence. By modelling the transition distribution as a Dirichlet process mixture model, parameters can vary over potentially an infinite number of regimes. The Dirichlet process however favours a parsimonious model without imposing restrictions on the parameter space. An empirical application demonstrates the ability of the model to capture both smooth and abrupt parameter changes over time, and a real-time forecasting exercise shows excellent predictive performance even in large dimensional VARs
The identification of vector autoregressive (VAR) processes from partial samples is a relevant probl...
Mots clefs: Integer-valued time series, hidden Markov models, autoregressive regime-switching models...
This paper extends the Bayesian semiparametric stochastic volatility (SV-DPM) model of Jensen and M...
We propose a Bayesian infinite hidden Markov model to estimate time-varying parameters in a vector a...
Markov-switching models are usually specified under the assumption that all the parameters change wh...
Abstract. This paper reviews recent advances in Bayesian nonparametric techniques for constructing a...
We show that it is possible to extend hidden Markov models to have a countably infinite number of hi...
We show that it is possible to extend hidden Markov models to have a countably infinite number of hi...
Dynamic volatility and correlation models with fixed parameters are restrictive for time series subj...
When modeling time course microarray data special interest may reside in identifying time frames in ...
Hidden Markov models (HMMs) are a rich family of probabilistic time series models with a long and su...
Summary We present a Bayesian forecasting methodology of discrete-time finite state-space hidden Mar...
Markov switching models are a family of models that introduces time variation in the parameters in t...
Abstract. Hidden Markov models (HMMs) are a popular approach for modeling sequential data, typically...
Standard Hidden Markov Model (HMM) and the more gen-eral Dynamic Bayesian Network (DBN) models assum...
The identification of vector autoregressive (VAR) processes from partial samples is a relevant probl...
Mots clefs: Integer-valued time series, hidden Markov models, autoregressive regime-switching models...
This paper extends the Bayesian semiparametric stochastic volatility (SV-DPM) model of Jensen and M...
We propose a Bayesian infinite hidden Markov model to estimate time-varying parameters in a vector a...
Markov-switching models are usually specified under the assumption that all the parameters change wh...
Abstract. This paper reviews recent advances in Bayesian nonparametric techniques for constructing a...
We show that it is possible to extend hidden Markov models to have a countably infinite number of hi...
We show that it is possible to extend hidden Markov models to have a countably infinite number of hi...
Dynamic volatility and correlation models with fixed parameters are restrictive for time series subj...
When modeling time course microarray data special interest may reside in identifying time frames in ...
Hidden Markov models (HMMs) are a rich family of probabilistic time series models with a long and su...
Summary We present a Bayesian forecasting methodology of discrete-time finite state-space hidden Mar...
Markov switching models are a family of models that introduces time variation in the parameters in t...
Abstract. Hidden Markov models (HMMs) are a popular approach for modeling sequential data, typically...
Standard Hidden Markov Model (HMM) and the more gen-eral Dynamic Bayesian Network (DBN) models assum...
The identification of vector autoregressive (VAR) processes from partial samples is a relevant probl...
Mots clefs: Integer-valued time series, hidden Markov models, autoregressive regime-switching models...
This paper extends the Bayesian semiparametric stochastic volatility (SV-DPM) model of Jensen and M...