不同分布假设下的风险价值预测

Manuela Braione, N. Scholtes
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引用次数: 49

摘要

众所周知,金融资产回报是有条件异方差的,通常是非正态分布的,是厚尾的,而且经常是倾斜的。这些特征必须考虑到产生准确的风险价值(VaR)预测。我们通过考虑不同的分布假设对样本外VaR预测中单变量和多变量GARCH模型的准确性的影响,对这个问题进行了全面的研究。所分析的分布集包括正态分布、学生分布、多元指数幂及其相应的偏态分布。VaR预测的准确性是通过实施用于对不同规格进行排序的标准统计回测程序来评估的。结果显示了在分布假设中考虑重尾和偏态的重要性,偏态学生在所有测试和置信水平上的表现都优于其他学生。
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Forecasting Value-at-Risk under Different Distributional Assumptions
Financial asset returns are known to be conditionally heteroskedastic and generally non-normally distributed, fat-tailed and often skewed. These features must be taken into account to produce accurate forecasts of Value-at-Risk (VaR). We provide a comprehensive look at the problem by considering the impact that different distributional assumptions have on the accuracy of both univariate and multivariate GARCH models in out-of-sample VaR prediction. The set of analyzed distributions comprises the normal, Student, Multivariate Exponential Power and their corresponding skewed counterparts. The accuracy of the VaR forecasts is assessed by implementing standard statistical backtesting procedures used to rank the different specifications. The results show the importance of allowing for heavy-tails and skewness in the distributional assumption with the skew-Student outperforming the others across all tests and confidence levels.
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