Authors
Luc Bauwens, Christian M Hafner, Jeroen VK Rombouts
Publication date
2007/4/1
Journal
Computational Statistics & Data Analysis
Volume
51
Issue
7
Pages
3551-3566
Publisher
North-Holland
Description
A new multivariate volatility model where the conditional distribution of a vector time series is given by a mixture of multivariate normal distributions is proposed. 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. Some theoretical properties of the model such as the unconditional covariance matrix and autocorrelations of squared returns are derived. The complexity of the model requires a powerful estimation algorithm. A simulation study compares estimation by maximum likelihood with the EM algorithm. Finally, the model is applied to daily US stock returns.
Total citations
2007200820092010201120122013201420152016201720182019202020212022202313614536631454713
Scholar articles
L Bauwens, CM Hafner, JVK Rombouts - Computational Statistics & Data Analysis, 2007