关于近似依存函数及其导数

IF 1.1 3区 数学 Q3 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS
Nader Tajvidi
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引用次数: 0

摘要

双变量极值分布可用于模拟极端水平随机变量观测值的依赖性。这些分布没有有限维参数族,但可以用某个一维函数来表征,该函数被称为皮康兹依赖函数。在许多应用中,一般的方法是用非参数方法估计依赖函数,然后根据估计值进行进一步分析。虽然这种方法很灵活,因为它不对隶属函数强加任何特殊结构,但其主要缺点是无法以封闭形式获得估计值。本文提供了一些理论结果,可用于为二次可微依存函数及其导数的精确或估计值找到封闭形式的近似值。我们通过计算对称和非对称逻辑依存函数及其二次导数的近似值来演示该方法。我们表明,该理论甚至可以应用于使用凸优化算法对依赖函数进行非参数估计的近似。其他讨论的应用还包括测试依赖函数估计值是否可以假定为对称的程序,以及估计二元极值分布的一致性度量。最后,使用澳大利亚的年度最高气温数据集来说明该理论如何用于建立半无限和紧凑的预测区域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

On approximating dependence function and its derivatives

On approximating dependence function and its derivatives

Bivariate extreme value distributions can be used to model dependence of observations from random variables in extreme levels. There is no finite dimensional parametric family for these distributions, but they can be characterized by a certain one-dimensional function which is known as Pickands dependence function. In many applications the general approach is to estimate the dependence function with a non-parametric method and then conduct further analysis based on the estimate. Although this approach is flexible in the sense that it does not impose any special structure on the dependence function, its main drawback is that the estimate is not available in a closed form. This paper provides some theoretical results which can be used to find a closed form approximation for an exact or an estimate of a twice differentiable dependence function and its derivatives. We demonstrate the methodology by calculating approximations for symmetric and asymmetric logistic dependence functions and their second derivatives. We show that the theory can be even applied to approximating a non-parametric estimate of dependence function using a convex optimization algorithm. Other discussed applications include a procedure for testing whether an estimate of dependence function can be assumed to be symmetric and estimation of the concordance measures of a bivariate extreme value distribution. Finally, an Australian annual maximum temperature dataset is used to illustrate how the theory can be used to build semi-infinite and compact predictions regions.

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来源期刊
Extremes
Extremes MATHEMATICS, INTERDISCIPLINARY APPLICATIONS-STATISTICS & PROBABILITY
CiteScore
2.20
自引率
7.70%
发文量
15
审稿时长
>12 weeks
期刊介绍: Extremes publishes original research on all aspects of statistical extreme value theory and its applications in science, engineering, economics and other fields. Authoritative and timely reviews of theoretical advances and of extreme value methods and problems in important applied areas, including detailed case studies, are welcome and will be a regular feature. All papers are refereed. Publication will be swift: in particular electronic submission and correspondence is encouraged. Statistical extreme value methods encompass a very wide range of problems: Extreme waves, rainfall, and floods are of basic importance in oceanography and hydrology, as are high windspeeds and extreme temperatures in meteorology and catastrophic claims in insurance. The waveforms and extremes of random loads determine lifelengths in structural safety, corrosion and metal fatigue.
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