On a dynamic mixture GARCH model

On a dynamic mixture GARCH model

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Article ID: iaor200969451
Country: United Kingdom
Volume: 28
Issue: 3
Start Page Number: 247
End Page Number: 265
Publication Date: Apr 2009
Journal: Journal of Forecasting
Authors: , ,
Keywords: GARCH
Abstract:

This paper proposes a new mixture GARCH model with a dynamic mixture proportion. The mixture Gaussian distribution of the error can vary from time to time. The Bayesian Information Criterion and the EM algorithm are used to estimate the number of parameters as well as the model parameters and their standard errors. The new model is applied to the S&P500 Index and Hang Seng Index and compared with GARCH models with Gaussian error and Student's t error. The result shows that the IGARCH effect in these index returns could be the result of the mixture of one stationary volatility component with another non-stationary volatility component. The VaR based on the new model performs better than traditional GARCH-based VaRs, especially in unstable stock markets.

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