Improving Value-at-Risk Estimation from the Normal Egarch Model

M. Gorji, R. Sajjad
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引用次数: 2

Abstract

Returns in financial assets display consistent excess kurtosis and skewness, implying the presence of large fluctuations not forecasted by Gaussian models. This paper applies a resampling method based on the bootstrap and a bias-correction step to improve Value-at-Risk (VaR) forecasting ability of the n-EGARCH (normal EGARCH) model and correct the VaR for both long and short positions. Our aim is to utilize the advantages of this model, but still use the bootstrap resampling method to accurate for the tendency of the model tomiscalculate the VaR. Empirical results indicate that the bias-correction method can improve the n-GARCH and n-EGARCH VaR forecasts so much that the acquired VaR predictions are different from the proposed probability. Additionally, allowing asymmetry in the conditional variance using the EGARCH model with normal distribution instead of GARCH improves the performance of the bias-correction method in forecasting the VaR for almost all considered indices. Moreover, the bias-corrected n-EGARCH model performs better than the simple t-EGARCH model. Thus, it seems that this model can take account of both the asymmetry in the conditional variance and leptokurtosis in returns distribution. However, we find that the superiority of the bias-corrected n-EGARCH model over the t-EGARCH model is not completely confirmed for short positions based on the censored likelihood scoring rule.
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从正态Egarch模型改进风险价值估计
金融资产的回报表现出一致的过度峰度和偏度,这意味着存在高斯模型无法预测的大波动。本文采用基于自举的重采样方法和偏差校正步骤来提高n-EGARCH(正态EGARCH)模型的风险价值(VaR)预测能力,并对多头和空头的VaR进行校正。我们的目的是利用该模型的优点,但仍然使用自举重采样方法来精确计算模型的VaR错误趋势。实证结果表明,偏差校正方法可以显著改善n-GARCH和n-EGARCH VaR预测,从而使获得的VaR预测与提出的概率有所不同。此外,使用正态分布的EGARCH模型而不是GARCH模型来允许条件方差的不对称性,可以提高偏差校正方法在预测几乎所有考虑指标的VaR时的性能。此外,修正偏差的n-EGARCH模型比简单的t-EGARCH模型性能更好。因此,该模型似乎既可以考虑条件方差的不对称性,也可以考虑收益分布的钩峰性。然而,我们发现基于删减似然评分规则的偏置修正n-EGARCH模型优于t-EGARCH模型的优越性并没有完全得到证实。
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