An integral part of carrying out statistical analysis for bivariate extreme events is characterising the tail dependence relationship between the two variables. In the extreme value theory literature, various techniques are available to assess or model different aspects of tail dependence; currently, inference must be carried out separately for each of these, with the possibility of contradictory conclusions. Recent developments by Nolde and Wadsworth (2022) have established theoretical links between different characterisations of extremal dependence, through studying the limiting shape of an appropriately-scaled sample cloud. We exploit these results for inferential purposes, by first developing an estimator for the sample limit set and then using this to deduce self-consistent estimates for the extremal dependence properties of interest. In simulations, the limit set estimates are shown to be successful across a range of distributions, and the estimates of dependence features are individually competitive with existing estimation techniques, and jointly provide a major improvement. We apply the approach to a data set of sea wave heights at pairs of locations, where the estimates successfully capture changes in the limiting shape of the sample cloud as the distance between the locations increases, including the weakening extremal dependence that is expected in environmental applications.
翻译:对两变极端事件进行统计分析的一个组成部分是说明两个变量之间的尾部依赖关系。在极端价值理论文献中,有各种技术可用于评估或模拟尾部依赖的不同方面;目前,必须分别对这些方面进行推断,并有可能得出相互矛盾的结论。诺尔德和瓦德斯沃思(2022年)最近的发展通过研究适当标定的样本云的极限形状,在极端依赖的不同特征之间建立了理论联系。我们将这些结果用于推断目的,首先为样板极限设置开发一个估测器,然后利用这个估算法推断出极端依赖性特性的自我一致估计值。在模拟中,设定的极限估计值显示在一系列分布上是成功的,依赖性特征的估计单项与现有的估算技术具有竞争力,并共同提供重大改进。我们用这种方法对两个地点的海浪高度数据集进行计算,在这两个地点之间的距离增加时,估计成功捕捉到样本云的极限形状的变化,包括预期在环境应用中减弱的极限依赖性。