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Volatility Modelling and Parametric Value-At-Risk Forecast Accuracy: Evidence from Metal Products

机译:波动率建模和参数风险值预测准确性:金属产品的证据

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摘要

In this paper, we investigate the one-day-ahead VaR and ES accuracy of four metal daily return series including Aluminium, Copper, Nickel and Zinc. Since, all sample presents volatility clustering, volatility asymmetry, and volatility persistence, we have assessed five GARCH-type models including three fractionary integrated models assuming three alternative distributions (normal, Student-t and skewed Student-t distributions). Estimates results reveal the performance of AR (1) - FIAPARCH model under a skewed Student-t distribution. We have computed one-day ahead VaR and (ES) for both short and long trading positions. Backtesting results show very clearly that the skewed Student-t FIAPARCH model provides the best results for both short and long VaR estimations. These results present several potential implications for metal markets risk quantifications and hedging strategies.
机译:在本文中,我们研究了包括铝,铜,镍和锌在内的四种金属日收益系列的提前一天VaR和ES准确性。由于所有样本都呈现出波动性聚类,波动性不对称和波动性持续性,我们评估了五个GARCH类型的模型,其中包括假设三个替代分布(正态分布,Student-t和偏斜的Student-t分布)的三个分数积分模型。估计结果揭示了倾斜的Student-t分布下AR(1)-FIAPARCH模型的性能。我们已经计算了空头和多头头寸的提前一天的VaR和(ES)。回测结果非常清楚地表明,偏斜的Student-t FIAPARCH模型为短期和长期VaR估计提供了最佳结果。这些结果对金属市场的风险量化和对冲策略提出了一些潜在的含义。

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