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The role of autoregressive conditional skewness and kurtosis in the estimation of conditional VaR

机译:自回归条件偏度和峰度在条件VaR估计中的作用

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This paper investigates the role of high-order moments in the estimation of conditional value at risk (VaR). We use the skewed generalized t distribution (SGT) with time-varying parameters to provide an accurate characterization of the tails of the standardized return distribution. We allow the high-order moments of the SGT density to depend on the past information set, and hence relax the conventional assumption in conditional VaR calculation that the distribution of standardized returns is iid. The maximum likelihood estimates show that the time-varying conditional volatility, skewness, tail-thickness, and peakedness parameters of the SGT density are statistically significant. The in-sample and out-of-sample performance results indicate that the conditional SGT-GARCH approach with autoregressive conditional skewness and kurtosis provides very accurate and robust estimates of the actual VaR thresholds.
机译:本文研究了高阶矩在估计条件风险值(VaR)中的作用。我们使用带有时变参数的偏广义t分布(SGT)来提供标准化收益分布尾部的准确特征。我们允许SGT密度的高阶矩取决于过去的信息集,因此放宽了条件VaR计算中传统收益的假设,即标准化收益的分布是iid。最大似然估计表明,SGT密度的时变条件波动率,偏度,尾部厚度和峰度参数在统计上是显着的。样本内和样本外性能结果表明,具有自回归条件偏度和峰度的条件SGT-GARCH方法可提供对实际VaR阈值的非常准确和可靠的估计。

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