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首页> 外文期刊>Journal of Statistical Planning and Inference >Jackknife empirical likelihood methods for Gini correlations and their equality testing
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Jackknife empirical likelihood methods for Gini correlations and their equality testing

机译:GINI相关性和平等测试的jackknife经验似然方法及其平等测试

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摘要

The Gini correlation plays an important role in measuring dependence of random variables with heavy tailed distributions, whose properties are a mixture of Pearson's and Spear man's correlations. Due to the structure of this dependence measure, there are two Gini correlations between each pair of random variables, which are not equal in general. Both the Gini correlation and the equality of the two Gini correlations play important roles in Economics. In the literature, there are limited papers focusing on the inference of the Gini correlations and their equality testing. In this paper, we develop the jackknife empirical likelihood (JEL) approach for the single Gini correlation, for testing the equality of the two Gini correlations, and for the Gini correlations' differences of two independent samples. The standard limiting chi-square distributions of those jackknife empirical likelihood ratio statistics are established and used to construct confidence intervals, rejection regions, and to calculate p-values of the tests. Simulation studies show that our methods are competitive to existing methods in terms of coverage accuracy and shortness of confidence intervals, as well as in terms of power of the tests. The proposed methods are illustrated in an application on a real data set from UCI Machine Learning Repository. (C) 2018 Elsevier B.V. All rights reserved.
机译:Gini相关在测量随机变量与大尾分布的依赖性中起重要作用,其性质是Pearson和Spear Man的相关性的混合。由于该依赖性测量的结构,每对随机变量之间存在两个基尼相关性,这通常不相等。两种基尼相关的基尼相关性和两个基尼相关性的平等在经济学中起重要作用。在文献中,有有限的论文专注于GINI相关性及其平等测试的推断。在本文中,我们开发了用于单一基尼相关的千刀的实证似然(JEL)方法,用于测试两种基尼相关性的平等,以及用于两个独立样本的基尼相关性的差异。建立并用于构建置信区间,拒绝区域和计算测试的击中区间,并用于计算测试的击退区间隔,抑制区域的标准Chi-Square分布。仿真研究表明,我们的方法在覆盖准确性和置信区间的覆盖准确性和休息短路方面都具有竞争力,以及测试的力量。所提出的方法在来自UCI机器学习存储库的真实数据集的应用程序中示出。 (c)2018 Elsevier B.v.保留所有权利。

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