Article ID Journal Published Year Pages File Type
417736 Computational Statistics & Data Analysis 2010 11 Pages PDF
Abstract

The Gaussian quasi-maximum likelihood estimator of Multivariate GARCH models is shown to be very sensitive to outliers in the data. A class of robust M-estimators for MGARCH models is developed. To increase the robustness of the estimators, the use of volatility models with the property of bounded innovation propagation is recommended. The Monte Carlo study and an empirical application to stock returns document the good robustness properties of the M-estimator with a fat-tailed Student tt loss function.

Related Topics
Physical Sciences and Engineering Computer Science Computational Theory and Mathematics
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