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首页> 外文期刊>Journal of the American statistical association >A Weighted Edge-Count Two-Sample Test for Multivariate and Object Data
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A Weighted Edge-Count Two-Sample Test for Multivariate and Object Data

机译:多元和对象数据的加权边缘计数两样本检验

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Two-sample tests for multivariate data and non-Euclidean data are widely used in many fields. Parametric tests are mostly restrained to certain types of data that meets the assumptions of the parametric models. In this article, we study a nonparametric testing procedure that uses graphs representing the similarity among observations. It can be applied to any data types as long as an informative similarity measure on the sample space can be defined. The classic test based on a similarity graph has a problem when the two sample sizes are different. We solve the problem by applying appropriate weights to different components of the classic test statistic. The new test exhibits substantial power gains in simulation studies. Its asymptotic permutation null distribution is derived and shown to work well under finite samples, facilitating its application to large datasets. The new test is illustrated through an analysis on a real dataset of network data.
机译:多变量数据和非欧几里得数据的两样本检验广泛用于许多领域。参数测试主要限于满足参数模型假设的某些类型的数据。在本文中,我们研究了一种非参数测试程序,该程序使用表示观察值之间相似度的图表。只要可以定义样本空间上的信息相似性度量,它就可以应用于任何数据类型。当两个样本大小不同时,基于相似度图的经典测试会出现问题。我们通过将适当的权重应用于经典测试统计的不同组成部分来解决该问题。新的测试在仿真研究中显示出可观的功率增益。导出了它的渐近置换零分布,并证明在有限样本下可以很好地工作,有利于将其应用于大型数据集。通过对网络数据的真实数据集进行分析来说明新测试。

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