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Nonparametric estimation of the spectral measure, and associated dependence measures, for multivariate extreme values using a limiting conditional representation

机译:使用限制条件表示法对多元极值的频谱量度以及相关的相关性量度进行非参数估计

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The traditional approach to multivariate extreme values has been through the multivariate extreme value distribution G, characterised by its spectral measure H and associated Pickands' dependence function A. More generally, for all asymptotically dependent variables, H determines the probability of all multivariate extreme events. When the variables are asymptotically dependent and under the assumption of unit Frechet margins, several methods exist for the estimation of G, H and A which use variables with radial component exceeding some high threshold. For each of these characteristics, we propose new asymptotically consistent nonparametric estimators which arise from Heffernan and Tawn's approach to multivariate extremes that conditions on variables with marginal values exceeding some high marginal threshold. The proposed estimators improve on existing estimators in three ways. First, under asymptotic dependence, they give self-consistent estimators of G, H and A; existing estimators are not self-consistent. Second, these existing estimators focus on the bivariate case, whereas our estimators extend easily to describe dependence in the multivariate case. Finally, for asymptotically independent cases, our estimators can model the level of asymptotic independence; whereas existing estimators for the spectral measure treat the variables as either being independent, or asymptotically dependent. For asymptotically dependent bivariate random variables, the new estimators are found to compare favourably with existing estimators, particularly for weak dependence. The method is illustrated with an application to finance data.
机译:多元极值的传统方法是通过多元极值分布G来实现,其特征在于其频谱度量H和相关的Pickands依赖函数A。更一般而言,对于所有渐近因变量,H确定所有多元极端事件的概率。当变量是渐近相关的并且在单位Frechet余量的假设下,存在几种用于估计G,H和A的方法,这些方法使用径向分量超过某个高阈值的变量。对于这些特征中的每一个,我们提出新的渐近一致的非参数估计量,该估计量是从Heffernan和Tawn的多元极端方法得出的,该方法以边际值超过某个高边际阈值的变量为条件。拟议的估算器通过三种方式改进了现有估算器。首先,在渐近依赖性下,它们给出了G,H和A的自洽估计量;现有的估计量不是自洽的。其次,这些现有的估计量集中在双变量情况下,而我们的估计量易于扩展以描述多变量情况下的依存关系。最后,对于渐近独立的情况,我们的估计器可以对渐近独立的水平进行建模。而频谱测量的现有估计量则将变量视为独立变量或渐近变量。对于渐近相关的二元随机变量,发现新的估计量与现有的估计量相比具有优势,尤其是对于弱依赖性。该方法与用于财务数据的应用程序一起说明。

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