The recent observed decline of business cycle variability suggests that broad macroeconomic risk may have fallen as well. This may in turn have some impact on equity risk premia. We investigate the latent structures in the volatilities of the business cycle and stock market valuations by estimating a Markov switching stochastic volatility model. We propose a sequential Monte Carlo technique for the Bayesian inference on both the unknown parameters and the latent variables of the hidden Markov model. Sequential importance sampling is used for filtering the latent variables and kernel estimator with a multiple-bandwidth is employed to reconstruct the parameter posterior distribution. We find that the switch to lower variability has oc...
none2In this paper we propose a sequential Monte Carlo algorithm to estimate a stochastic volatility...
In this article we propose a Monte Carlo algorithm for sequential parameter learning for a stochasti...
Abstract: In this paper we propose a sequential Monte Carlo algorithm to estimate a stochastic volat...
We study a Markov switching stochastic volatility model with heavy tail innovations in the observab...
We propose a new class of Markov-switching (MS) models for business cycle analysis. As usually done ...
In the study we introduce an extension to a stochastic volatility in mean model (SV-M), allowing for...
In the study we introduce an extension to a stochastic volatility in mean model (SV-M), allowing for...
van Norden and Schaller (1996) develop a standard regime-switching model to study stock market crash...
We apply sequential Monte Carlo (SMC) to the detection of turning points in the business cycle and t...
This article presents a new way of modeling time-varying volatility. We generalize the usual stochas...
This paper generalizes the basic Wishart multivariate stochastic volatility model of Philipov and Gl...
We adopt a regime switching approach to study concrete financial time series with particular emphasi...
International audienceA simple method is proposed to estimate stochastic volatility models with Mark...
Modelling of the fi nancial variable evolution represents an important issue in financial econometri...
This article analyzes a Markov switching stochastic volatility (MSSV) model to accommodate the shift...
none2In this paper we propose a sequential Monte Carlo algorithm to estimate a stochastic volatility...
In this article we propose a Monte Carlo algorithm for sequential parameter learning for a stochasti...
Abstract: In this paper we propose a sequential Monte Carlo algorithm to estimate a stochastic volat...
We study a Markov switching stochastic volatility model with heavy tail innovations in the observab...
We propose a new class of Markov-switching (MS) models for business cycle analysis. As usually done ...
In the study we introduce an extension to a stochastic volatility in mean model (SV-M), allowing for...
In the study we introduce an extension to a stochastic volatility in mean model (SV-M), allowing for...
van Norden and Schaller (1996) develop a standard regime-switching model to study stock market crash...
We apply sequential Monte Carlo (SMC) to the detection of turning points in the business cycle and t...
This article presents a new way of modeling time-varying volatility. We generalize the usual stochas...
This paper generalizes the basic Wishart multivariate stochastic volatility model of Philipov and Gl...
We adopt a regime switching approach to study concrete financial time series with particular emphasi...
International audienceA simple method is proposed to estimate stochastic volatility models with Mark...
Modelling of the fi nancial variable evolution represents an important issue in financial econometri...
This article analyzes a Markov switching stochastic volatility (MSSV) model to accommodate the shift...
none2In this paper we propose a sequential Monte Carlo algorithm to estimate a stochastic volatility...
In this article we propose a Monte Carlo algorithm for sequential parameter learning for a stochasti...
Abstract: In this paper we propose a sequential Monte Carlo algorithm to estimate a stochastic volat...