Title of article
The conditional autoregressive Wishart model for multivariate stock market volatility
Author/Authors
Golosnoy، نويسنده , , Vasyl and Gribisch، نويسنده , , Bastian and Liesenfeld، نويسنده , , Roman، نويسنده ,
Pages
13
From page
211
To page
223
Abstract
We propose a Conditional Autoregressive Wishart (CAW) model for the analysis of realized covariance matrices of asset returns. Our model assumes an autoregressive moving average structure for the scale matrix of the Wishart distribution. It accounts for positive definiteness of covariance matrices without imposing parametric restrictions, and can be estimated by Maximum Likelihood. We also propose extensions of the CAW model obtained by including a Mixed Data Sampling (MIDAS) component and Heterogeneous Autoregressive (HAR) dynamics for long-run fluctuations. The CAW models are applied to realized variances and covariances for five New York Stock Exchange stocks.
Keywords
Observation-driven models , Mixed data sampling , covariance matrix , Component volatility models , Realized volatility
Journal title
Astroparticle Physics
Record number
2041539
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