Two symmetric and computationally efficient Gini correlations

IF 0.8 Q4 STATISTICS & PROBABILITY Dependence Modeling Pub Date : 2020-01-01 DOI:10.1515/demo-2020-0020
Courtney Vanderford, Yongli Sang, Xin Dang
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引用次数: 1

Abstract

Abstract Standard Gini correlation plays an important role in measuring the dependence between random variables with heavy-tailed distributions. It is based on the covariance between one variable and the rank of the other. Hence for each pair of random variables, there are two Gini correlations and they are not equal in general, which brings a substantial difficulty in interpretation. Recently, Sang et al (2016) proposed a symmetric Gini correlation based on the joint spatial rank function with a computation cost of O(n2) where n is the sample size. In this paper, we study two symmetric and computationally efficient Gini correlations with the computational complexity of O(n log n). The properties of the new symmetric Gini correlations are explored. The influence function approach is utilized to study the robustness and the asymptotic behavior of these correlations. The asymptotic relative efficiencies are considered to compare several popular correlations under symmetric distributions with different tail-heaviness as well as an asymmetric log-normal distribution. Simulation and real data application are conducted to demonstrate the desirable performance of the two new symmetric Gini correlations.
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两个对称且计算效率高的基尼系数相关性
标准基尼相关在衡量具有重尾分布的随机变量之间的相关性方面起着重要作用。它基于一个变量和另一个变量的秩之间的协方差。因此,对于每一对随机变量,都有两个基尼系数相关性,它们通常不相等,这给解释带来了很大的困难。最近,Sang等(2016)提出了基于联合空间秩函数的对称基尼相关,计算成本为O(n2),其中n为样本量。本文研究了两种计算复杂度为O(n log n)的对称且计算效率高的Gini关联,并探讨了新的对称Gini关联的性质。利用影响函数方法研究了这些相关性的鲁棒性和渐近性。考虑渐近相对效率,比较了不同尾重对称分布和非对称对数正态分布下几种常见的相关性。通过仿真和实际数据应用,验证了这两种新的对称基尼系数的良好性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Dependence Modeling
Dependence Modeling STATISTICS & PROBABILITY-
CiteScore
1.00
自引率
0.00%
发文量
18
审稿时长
12 weeks
期刊介绍: The journal Dependence Modeling aims at providing a medium for exchanging results and ideas in the area of multivariate dependence modeling. It is an open access fully peer-reviewed journal providing the readers with free, instant, and permanent access to all content worldwide. Dependence Modeling is listed by Web of Science (Emerging Sources Citation Index), Scopus, MathSciNet and Zentralblatt Math. The journal presents different types of articles: -"Research Articles" on fundamental theoretical aspects, as well as on significant applications in science, engineering, economics, finance, insurance and other fields. -"Review Articles" which present the existing literature on the specific topic from new perspectives. -"Interview articles" limited to two papers per year, covering interviews with milestone personalities in the field of Dependence Modeling. The journal topics include (but are not limited to):  -Copula methods -Multivariate distributions -Estimation and goodness-of-fit tests -Measures of association -Quantitative risk management -Risk measures and stochastic orders -Time series -Environmental sciences -Computational methods and software -Extreme-value theory -Limit laws -Mass Transportations
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