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On a Dynamic Mixture GARCH Model

机译:在动态混合物GARCH模型上

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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.
机译:本文提出了一种具有动态混合比例的新型混合GARCH模型。混合高斯分布的误差可能会不时变化。贝叶斯信息准则和EM算法用于估计参数的数量以及模型参数及其标准误差。新模型应用于S&P500指数和恒生指数,并与具有高斯误差和Student t误差的GARCH模型进行了比较。结果表明,这些指数回报中的IGARCH效应可能是一个静态波动率成分与另一种非静态波动率成分混合的结果。基于新模型的VaR优于传统的基于GARCH的VaR,尤其是在不稳定的股票市场中。

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