An efficient method for Bayesian inference in stochastic volatility models uses a linear state space representation to define a Gibbs sampler in which the volatilities are jointly updated. This method involves the choice of an offset parameter and we illustrate how its choice can have an important effect on the posterior inference. A Metropolis–Hastings algorithm is developed to robustify this approach to choice of the offset parameter. The method is illustrated on simulated data with known parameters, the daily log returns of the Eurostoxx index and a Bayesian vector autoregressive model with stochastic volatility
This paper provides two Bayesian algorithms to efficiently estimate non-linear/non-Gaussian switchin...
This paper provides two Bayesian algorithms to efficiently estimate non-linear/non-Gaussian switchin...
This paper provides a Bayesian algorithm to efficiently estimate non-linear/non-Gaussian switching s...
An efficient method for Bayesian inference in stochastic volatility models uses a linear state space...
In this paper, we introduce efficient ensemble Markov Chain Monte Carlo (MCMC) sampling methods for ...
We investigate simulation methodology for Bayesian inference in Lévy-driven stochastic volatility (S...
Bayesian inference for stochastic volatility models using MCMC methods highly depends on actual par...
We discuss efficient Bayesian estimation of dynamic covariance matrices in multivariate time series ...
The R package stochvol provides a fully Bayesian implementation of heteroskedasticity modeling withi...
We investigate simulation methodology for Bayesian inference in Lévy-driven stochastic volatility (S...
This article introduces a new efficient simulation smoother and disturbance smoother for asymmetric ...
We propose a Bayesian stochastic search approach to selecting restrictions on multivariate regressio...
This paper extends the existing fully parametric Bayesian literature on stochastic volatility to all...
We study a Markov switching stochastic volatility model with heavy tail innovations in the observab...
We develop a Bayesian semiparametric method to estimate a time-varying parameter regression model wi...
This paper provides two Bayesian algorithms to efficiently estimate non-linear/non-Gaussian switchin...
This paper provides two Bayesian algorithms to efficiently estimate non-linear/non-Gaussian switchin...
This paper provides a Bayesian algorithm to efficiently estimate non-linear/non-Gaussian switching s...
An efficient method for Bayesian inference in stochastic volatility models uses a linear state space...
In this paper, we introduce efficient ensemble Markov Chain Monte Carlo (MCMC) sampling methods for ...
We investigate simulation methodology for Bayesian inference in Lévy-driven stochastic volatility (S...
Bayesian inference for stochastic volatility models using MCMC methods highly depends on actual par...
We discuss efficient Bayesian estimation of dynamic covariance matrices in multivariate time series ...
The R package stochvol provides a fully Bayesian implementation of heteroskedasticity modeling withi...
We investigate simulation methodology for Bayesian inference in Lévy-driven stochastic volatility (S...
This article introduces a new efficient simulation smoother and disturbance smoother for asymmetric ...
We propose a Bayesian stochastic search approach to selecting restrictions on multivariate regressio...
This paper extends the existing fully parametric Bayesian literature on stochastic volatility to all...
We study a Markov switching stochastic volatility model with heavy tail innovations in the observab...
We develop a Bayesian semiparametric method to estimate a time-varying parameter regression model wi...
This paper provides two Bayesian algorithms to efficiently estimate non-linear/non-Gaussian switchin...
This paper provides two Bayesian algorithms to efficiently estimate non-linear/non-Gaussian switchin...
This paper provides a Bayesian algorithm to efficiently estimate non-linear/non-Gaussian switching s...