We develop efficient simulation techniques for Bayesian inference on switching GARCH models. Our contribution to existing literature is manifold. First, we discuss different multi-move sampling techniques for Markov Switching (MS) state space models with particular attention to MSGARCH\ud models. Our multi-move sampling strategy is based on the Forward Filtering Backward Sampling (FFBS) applied to an approximation of MS-GARCH. Another important contribution is the use of multi-point samplers, such as the Multiple-Try Metropolis (MTM) and the Multiple trial\ud Metropolize Independent Sampler, in combination with FFBS for the MS-GARCH process. In this sense we ex- tend to the MS state space models the work of So [2006] on efficient MTM sample...
We show how to improve the efficiency of Markov Chain Monte Carlo (MCMC) simulations in dynamic mixt...
We develop univariate regime-switching GARCH (RS-GARCH) models wherein the conditional variance swit...
Switching dynamical systems are an expressive model class for the analysis of time-series data. As i...
We develop efficient simulation techniques for Bayesian inference on switching GARCH models. Our con...
Efficient simulation techniques for Bayesian inference on Markov-switching (MS) GARCH models are dev...
We develop a Markov-switching GARCH model (MS-GARCH) wherein the conditional mean and variance switc...
We develop a Markov-switching GARCH model (MS-GARCH) wherein the conditional mean and variance switc...
In the present paper we study switching state space models from a Bayesian point of view. For estima...
This paper describes a GAUSS program of a Markov-chain sampling algorithm for GARCH models proposed ...
We consider non-linear state-space models for univariate time series with non-Gaussian observations ...
We develop in this paper three multiple-try blocking schemes for Bayesian analysis of nonlinear and ...
This paper is devoted to show duality in the estimation of Markov Switching (MS) GARCH processes. It...
This thesis is concerned with developing efficient MCMC (Markov Chain Monte Carlo) techniques for no...
Markov jump processes and continuous time Bayesian networks are important classes of continuous time...
Markov jump processes (or continuous-time Markov chains) are a simple and important class of continu...
We show how to improve the efficiency of Markov Chain Monte Carlo (MCMC) simulations in dynamic mixt...
We develop univariate regime-switching GARCH (RS-GARCH) models wherein the conditional variance swit...
Switching dynamical systems are an expressive model class for the analysis of time-series data. As i...
We develop efficient simulation techniques for Bayesian inference on switching GARCH models. Our con...
Efficient simulation techniques for Bayesian inference on Markov-switching (MS) GARCH models are dev...
We develop a Markov-switching GARCH model (MS-GARCH) wherein the conditional mean and variance switc...
We develop a Markov-switching GARCH model (MS-GARCH) wherein the conditional mean and variance switc...
In the present paper we study switching state space models from a Bayesian point of view. For estima...
This paper describes a GAUSS program of a Markov-chain sampling algorithm for GARCH models proposed ...
We consider non-linear state-space models for univariate time series with non-Gaussian observations ...
We develop in this paper three multiple-try blocking schemes for Bayesian analysis of nonlinear and ...
This paper is devoted to show duality in the estimation of Markov Switching (MS) GARCH processes. It...
This thesis is concerned with developing efficient MCMC (Markov Chain Monte Carlo) techniques for no...
Markov jump processes and continuous time Bayesian networks are important classes of continuous time...
Markov jump processes (or continuous-time Markov chains) are a simple and important class of continu...
We show how to improve the efficiency of Markov Chain Monte Carlo (MCMC) simulations in dynamic mixt...
We develop univariate regime-switching GARCH (RS-GARCH) models wherein the conditional variance swit...
Switching dynamical systems are an expressive model class for the analysis of time-series data. As i...