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Optimal heavy tail estimation – Part 1: Order selection

机译:最佳粗尾估计–第1部分:订单选择

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The tail probability, P, of the distribution of a variable is important for risk analysis of extremes. Many variables in complex geophysical systems show heavy tails, where P decreases with the value, x, of a variable as a power law with a characteristic exponent, α. Accurate estimation of α on the basis of data is currently hindered by the problem of the selection of the order, that is, the number of largest x values to utilize for the estimation. This paper presents a new, widely applicable, data-adaptive order selector, which is based on computer simulations and brute force search. It is the first in a set of papers on optimal heavy tail estimation. The new selector outperforms competitors in a Monte Carlo experiment, where simulated data are generated from stable distributions and AR(1) serial dependence. We calculate error bars for the estimated α by means of simulations. We illustrate the method on an artificial time series. We apply it to an observed, hydrological time series from the River Elbe and find an estimated characteristic exponent of 1.48?±?0.13. This result indicates finite mean but infinite variance of the statistical distribution of river runoff.
机译:变量分布的尾部概率P对于极端风险分析很重要。复杂地球物理系统中的许多变量都显示出重尾,其中P随着具有特征指数α的幂律的变量x的值x减小。当前,由于顺序选择的问题,即用于估计的最大x值的数量,阻碍了基于数据的α精确估计。本文提出了一种新的,广泛适用的,数据自适应的订单选择器,该选择器基于计算机模拟和蛮力搜索。这是有关最佳粗尾估计的一组论文中的第一篇。在蒙特卡洛实验中,新选择器的性能优于竞争对手,后者从稳定的分布和AR(1)序列相关性生成模拟数据。我们通过模拟计算估计的α的误差线。我们在人工时间序列上说明了该方法。我们将其应用于来自易北河的观测水文时间序列,发现估计特征指数为1.48?±?0.13。该结果表明河流径流量统计分布的均值是有限的,但是无限的。

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