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Density-based empirical likelihood procedures for testing symmetry of data distributions and K-sample comparisons

机译:基于密度的经验似然程序用于测试数据分布和K样本比较的对称性

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摘要

In practice, parametric likelihood-ratio techniques are powerful statistical tools. In this article, we propose and examine novel and simple distribution-free test statistics that efficiently approximate parametric likelihood ratios to analyze and compare distributions of K groups of observations. Using the density-based empirical likelihood methodology, we develop a Stata package that applies to a test for symmetry of data distributions and compares K-sample distributions. Recognizing that recent statistical software packages do not sufficiently address K-sample nonparametric comparisons of data distributions, we propose a new Stata command, vxdbel, to execute exact density-based empirical likelihood-ratio tests using K samples. To calculate p-values of the proposed tests, we use the following methods: 1) a classical technique based on Monte Carlo p-value evaluations; 2) an interpolation technique based on tabulated critical values; and 3) a new hybrid technique that combines methods 1 and 2. The third, cutting-edge method is shown to be very efficient in the context of exact-test p-value computations. This Bayesian-type method considers tabulated critical values as prior information and Monte Carlo generations of test statistic values as data used to depict the likelihood function. In this case, a nonparametric Bayesian method is proposed to compute critical values of exact tests.
机译:实际上,参数似然比技术是强大的统计工具。在本文中,我们提出并研究了新颖且简单的无分布检验统计量,该统计量可有效地近似参数似然比,以分析和比较K组观测值的分布。使用基于密度的经验似然方法,我们开发了一种Stata程序包,该程序包可用于测试数据分布的对称性并比较K样本分布。认识到最新的统计软件包不能充分解决K样本数据分布的非参数比较问题,我们提出了一个新的Stata命令 vxdbel ,以使用K个样本执行精确的基于密度的经验似然比检验。为了计算所提出的测试的p值,我们使用以下方法:1)基于蒙特卡洛p值评估的经典技术; 2)基于列表临界值的插值技术;和3)结合了方法1和方法2的新混合技术。在精确检验p值计算的背景下,第三种尖端方法被证明是非常有效的。这种贝叶斯类型的方法将列表化的临界值视为先验​​信息,并将测试统计值的蒙特卡洛生成视为用于描述似然函数的数据。在这种情况下,提出了一种非参数贝叶斯方法来计算精确测试的临界值。

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