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A high-dimensional spatial rank test for two-sample location problems

机译:两个样本位置问题的高维空间等级测试

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摘要

In high-dimensional situations, the traditional multivariate sign- or rank-based procedures for the two-sample location testing problems are ineffective, since in the construction of the test statistics, the scatter matrix to be inverted is singular. To solve this problem, many high-dimensional spatial sign or rank tests have been proposed, some of which are very efficient. However, most of these existing tests no longer work in very high dimensional situations, which only allows the dimension of variables to be the square of the sample sizes at most, hence are restrictive for practical applications. On this ground, a new high-dimensional spatial rank test is proposed in this paper, which is invariant under scalar transformations, maintains the efficiency advantage of spatial-rank-based testing methods, and could even allow the dimension to grow almost exponentially with the sample sizes. The theoretical results of the proposed test are established, followed by some convincing numerical results and two real data analyses. (C) 2019 Elsevier B.V. All rights reserved.
机译:在高维情况下,传统的多变量符号或基于秩的两个样本位置测试问题的程序无效,因为在测试统计的结构中,散射矩阵被倒置为单数。为了解决这个问题,已经提出了许多高维空间标志或等级测试,其中一些是非常有效的。然而,这些现有测试中的大多数不再在非常高的尺寸情况下工作,这只允许变量的尺寸最多是样本尺寸的平方,因此对实际应用是限制性的。在此接地上,在本文中提出了一种新的高维空间等级测试,该纸张在标量变换下不变,保持了基于空间秩的测试方法的效率优势,并且甚至可以允许维数几乎以呈指数呈指数增长而导致的样本尺寸。建立了所提出的测试的理论结果,其次是一些令人信服的数值结果和两个真实数据分析。 (c)2019年Elsevier B.V.保留所有权利。

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