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A Sturdy Reduced-Bias Extreme Quantile (VaR) Estimator

机译:稳健的降低偏差偏极分位数(VaR)估计器

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摘要

The main objective of statistics of extremes lies in the estimation of quantities related to extreme events. In many areas of application, such as statistical quality control, insurance, and finance, a typical requirement is to estimate a high quantile, that is, the value at risk at a level p (VaR_p), high enough so that the chance of an exceedance of that value is equal to p, small. In this article we deal with the semiparametric estimation of VaR_p for heavy tails. The classical semiparametric estimators of parameters characterizing the tail behavior of the underlying model F usually exhibit a high bias for low thresholds, that is, for large values of k, the number of top order statistics used for the estimation. We shall here deal with bias reduction techniques for heavy tails, trying to improve the performance of the classical high quantile estimators through the use of an adequate bias-corrected tail index estimator. The new high quantile estimators have a mean squared error smaller than that of the classical estimators, even for small values of k. They are, thus, alternatives to the classical estimators not only around optimal levels but also for other levels. The asymptotic distributional properties of the proposed classes of estimators are derived. The estimators are compared with alternative ones, not only asymptotically but also for finite samples, through Monte Carlo techniques. An application to the analysis of different datasets in the field of finance is also provided.
机译:极端事件统计的主要目的在于估计与极端事件有关的数量。在许多应用领域中,例如统计质量控制,保险和金融领域,典型的要求是估计较高的分位数,即,处于p级(VaR_p)的风险值足够高,从而有机会获得该值的超出等于p,很小。在本文中,我们处理重尾的VaR_p的半参数估计。表征基础模型F的尾部行为的参数的经典半参数估计量通常对于低阈值(即,对于较大的k值),用于估计的顶级统计量数量表现出较高的偏差。在这里,我们将讨论重尾的减少偏差的技术,试图通过使用适当的偏差校正后的尾部指数估计器来改善经典的高分位数估计器的性能。即使对于较小的k值,新的高分位数估计量的均方误差也比经典估计量小。因此,它们不仅是最佳估计值的替代品,而且还是其他估计值的替代品。推导了拟议类别的估计量的渐近分布性质。通过蒙特卡洛技术,不仅将估计量与渐进量进行比较,而且还将对有限样本进行比较。还提供了一种用于分析金融领域中的不同数据集的应用程序。

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