Multivariate Stochastic Volatility Models: Bayesian Estimation and Model Comparison |
| |
Authors: | Jun Yu Renate Meyer |
| |
Affiliation: | a School of Economics and Social Sciences, Singapore Management University, Singaporeb Department of Statistics, University of Auckland, Auckland, New Zealand |
| |
Abstract: | In this paper we show that fully likelihood-based estimation and comparison of multivariate stochastic volatility (SV) models can be easily performed via a freely available Bayesian software called WinBUGS. Moreover, we introduce to the literature several new specifications that are natural extensions to certain existing models, one of which allows for time-varying correlation coefficients. Ideas are illustrated by fitting, to a bivariate time series data of weekly exchange rates, nine multivariate SV models, including the specifications with Granger causality in volatility, time-varying correlations, heavy-tailed error distributions, additive factor structure, and multiplicative factor structure. Empirical results suggest that the best specifications are those that allow for time-varying correlation coefficients. |
| |
Keywords: | DIC Factors Granger causality in volatility Heavy-tailed distributions MCMC Multivariate stochastic volatility Time-varying correlations |
本文献已被 InformaWorld 等数据库收录! |
|