非均匀极值下极值指数估计的EVIboost

Jiaxi Wang, Yanxi Hou, Xingchi Li, Tiandong Wang
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引用次数: 0

摘要

在回归框架下对重尾分布的异质性进行建模是具有挑战性的,然而经典的统计方法通常会在分布模型上设置条件,以促进学习过程。然而,这些条件可能会忽略尾部的权重和协变量之间的复杂依赖结构。此外,尾部区域的数据稀疏性使推理方法不太稳定,导致对极端相关量的估计存在偏差。本文提出了一种梯度提升算法来估计具有异质极值的函数极值指数。我们提出的算法是一个数据驱动的过程,捕捉尾部分布中的复杂动态结构。我们还进行了广泛的仿真研究,以证明所提出的算法的预测准确性。此外,我们将我们的方法应用于真实世界的数据集,以说明金融业中重尾现象的状态相关和时变特性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
EVIboost for the Estimation of Extreme Value Index Under Heterogeneous Extremes
Modeling heterogeneity on heavy-tailed distributions under a regression framework is challenging, yet classical statistical methodologies usually place conditions on the distribution models to facilitate the learning procedure. However, these conditions will likely overlook the complex dependence structure between the heaviness of tails and the covariates. Moreover, data sparsity on tail regions makes the inference method less stable, leading to biased estimates for extreme-related quantities. This paper proposes a gradient boosting algorithm to estimate a functional extreme value index with heterogeneous extremes. Our proposed algorithm is a data-driven procedure capturing complex and dynamic structures in tail distributions. We also conduct extensive simulation studies to show the prediction accuracy of the proposed algorithm. In addition, we apply our method to a real-world data set to illustrate the state-dependent and time-varying properties of heavy-tail phenomena in the financial industry.
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