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Multivariate Mixed Normal Conditional Heteroskedasticity
Author(s) -
Luc Bauwens,
Christian Hafner,
Jeroen V.K. Rombouts
Publication year - 2006
Publication title -
ssrn electronic journal
Language(s) - English
Resource type - Journals
ISSN - 1556-5068
DOI - 10.2139/ssrn.914148
Subject(s) - mathematics , covariance matrix , conditional variance , estimation of covariance matrices , covariance , gibbs sampling , multivariate normal distribution , statistics , multivariate statistics , heteroscedasticity , inverse wishart distribution , econometrics , conditional probability distribution , volatility (finance) , autoregressive conditional heteroskedasticity , bayesian probability
We propose a new multivariate volatility model where the conditional distribution of a vector time series is given by a mixture of multivariate normal distributions. Each of these distributions is allowed to have a time-varying covariance matrix. The process can be globally covariance-stationary even though some components are not covariance-stationary. We derive some theoretical properties of the model such as the unconditional covariance matrix and autocorrelations of squared returns. The complexity of the model requires a powerful estimation algorithm. In a simulation study we compare estimation by maximum likelihood with the EM algorithm and Bayesian estimation with a Gibbs sampler. Finally, we apply the model to daily U.S. stock returns.

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