Multivariate Stochastic Volatility with Co-Heteroscedasticity

Author:

Chan Joshua1,Doucet Arnaud2,León-González Roberto3,Strachan Rodney W.4

Affiliation:

1. Purdue University , West Lafayette , USA

2. University of Oxford , Oxford , England

3. National Graduate Institute for Policy Studies (GRIPS) , Tokyo , Japan

4. University of Queensland , Brisbane , Australia

Abstract

Abstract A new methodology that decomposes shocks into homoscedastic and heteroscedastic components is developed. This specification implies there exist linear combinations of heteroscedastic variables that eliminate heteroscedasticity; a property known as co-heteroscedasticity. The heteroscedastic part of the model uses a multivariate stochastic volatility inverse Wishart process. The resulting model is invariant to the ordering of the variables, which is shown to be important for volatility estimation. By incorporating testable co-heteroscedasticity restrictions, the specification allows estimation in moderately high-dimensions. The computational strategy uses a novel particle filter algorithm, a reparameterization that substantially improves algorithmic convergence and an alternating-order particle Gibbs that reduces the amount of particles needed for accurate estimation. An empirical application to a large Vector Autoregression (VAR) is provided, finding strong evidence for co-heteroscedasticity and that the new method outperforms some previously proposed methods in terms of forecasting at all horizons. It is also found that the structural monetary shock is 98.8 % homoscedastic, and that investment and the SP 500 index are nearly 100 % determined by fat tail heteroscedastic shocks. A Monte Carlo experiment illustrates that the new method estimates well the characteristics of approximate factor models with heteroscedastic errors.

Funder

Policy Research Center, National Graduate Institute for Policy Studies

Japan Society for the Promotion of Science

Publisher

Walter de Gruyter GmbH

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