Ferreira Marta
Centro de Matemática, Universidade do Minho, Braga, Portugal.
Adv Stat Anal. 2023 Mar 31:1-25. doi: 10.1007/s10182-023-00474-y.
The extreme value theory (EVT) encompasses a set of methods that allow inferring about the risk inherent to various phenomena in the scope of economic, financial, actuarial, environmental, hydrological, climatic sciences, as well as various areas of engineering. In many situations the clustering effect of high values may have an impact on the risk of occurrence of extreme phenomena. For example, extreme temperatures that last over time and result in drought situations, the permanence of intense rains leading to floods, stock markets in successive falls and consequent catastrophic losses. The extremal index is a measure of EVT associated with the degree of clustering of extreme values. In many situations, and under certain conditions, it corresponds to the arithmetic inverse of the average size of high-value clusters. The estimation of the extremal index generally entails two sources of uncertainty: the level at which high observations are considered and the identification of clusters. There are several contributions in the literature on the estimation of the extremal index, including methodologies to overcome the aforementioned sources of uncertainty. In this work we will revisit several existing estimators, apply automatic choice methods, both for the threshold and for the clustering parameter, and compare the performance of the methods. We will end with an application to meteorological data.
极值理论(EVT)包含一组方法,这些方法可用于推断经济、金融、精算、环境、水文、气候科学以及各个工程领域中各种现象所固有的风险。在许多情况下,高值的聚类效应可能会对极端现象发生的风险产生影响。例如,持续一段时间并导致干旱情况的极端温度、持续强降雨导致洪水、股票市场连续下跌并随之造成灾难性损失。极值指数是与极值聚类程度相关的EVT度量。在许多情况下,在特定条件下,它对应于高值聚类平均大小的算术倒数。极值指数的估计通常涉及两个不确定性来源:考虑高观测值的水平和聚类的识别。文献中有几篇关于极值指数估计的论文,包括克服上述不确定性来源的方法。在这项工作中,我们将重新审视几种现有的估计器,应用自动选择方法来确定阈值和聚类参数,并比较这些方法的性能。我们将以气象数据的应用作为结尾。