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Tests of mutual independence among several random vectors using univariate and multivariate ranks of nearest neighbours

机译:使用单变量和多变量等级的几个随机载体之间的相互独立性的测试

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摘要

Testing mutual independence among several random vectors of arbitrary dimensions is a challenging problem in Statistics, and it has gained considerable interest in recent years. In this article, we propose some nonparametric tests based on different notions of ranks of nearest neighbour. These proposed tests can be conveniently used for high dimensional data, even when the dimensions of the random vectors are larger than the sample size. We investigate the performance of these tests on several simulated and real data sets and also use them in identifying causal relationships among the random vectors. Our numerical results show that they can outperform state-of-the-art tests in a wide variety of examples.
机译:在统计数据中测试几个随机尺寸的多个随机载体之间的相互独立性,近年来才获得了相当大的兴趣。 在本文中,我们提出了一些基于最近邻居等级的不同概念的非参数测试。 即使当随机向量的尺寸大于样本大小,这些所提出的测试也可以方便地用于高尺寸数据。 我们调查这些测试对多个模拟和实际数据集的性能,并且还使用它们来识别随机向量之间的因果关系。 我们的数值结果表明,它们可以在各种示例中优于最先进的测试。

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