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Multivariate and multiple permutation tests

机译:多元和多重排列检验

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In this article, we consider the use of permutation tests for comparing multivariate parameters from two populations. First, the underlying properties of permutation tests when comparing parameter vectors from two distributions P and Q are developed. Although an exact level a test can be constructed by a permutation test when the fundamental assumption of identical underlying distributions holds, permutation tests have often been misused. Indeed, permutation tests have frequently been applied in cases where the underlying distributions need not be identical under the null hypothesis. In such cases, permutation tests fail to control the Type 1 error, even asymptotically. However, we provide valid procedures in the sense that even when the assumption of identical distributions fails, one can establish the asymptotic validity of permutation tests in general while retaining the exactness property when all the observations are i.i.d. In the multivariate testing problem for testing the global null hypothesis of equality of parameter vectors, a modified Hotelling's T-2-statistic as well as tests based on the maximum of studentized absolute differences are considered. In the latter case, a bootstrap prepivoting test statistic is constructed, which leads to a bootstrapping after permuting algorithm. Then, these tests are applied as a basis for testing multiple hypotheses simultaneously by invoking the closure method to control the Familywise Error Rate. Lastly, Monte Carlo simulation studies and an empirical example are presented. (C) 2016 Elsevier B.V. All rights reserved.
机译:在本文中,我们考虑使用置换检验来比较两个总体的多元参数。首先,开发了当比较来自两个分布P和Q的参数向量时置换测试的基本属性。尽管在相同基础分布的基本假设成立的情况下,可以通过置换测试来构建准确的测试水平,但是置换测试经常被滥用。确实,在零假设下基础分布不需要相同的情况下,经常使用置换检验。在这种情况下,置换测试甚至无法渐进地控制类型1错误。但是,从某种意义上讲,我们提供了有效的程序,即使在假设相同分布的假设失败的情况下,当所有观测值都为i.d.时,人们仍可以确定排列检验的渐近有效性,同时保留准确性属性。在用于检验参数向量相等性的全局零假设的多元检验问题中,考虑了修正的Hotelling T-2统计量以及基于最大学生化绝对差的检验。在后一种情况下,将构建引导程序前枢轴测试统计信息,这会导致在置换算法后进行引导。然后,通过调用封闭方法来控制家庭错误率,将这些检验作为同时检验多个假设的基础。最后,给出了蒙特卡罗模拟研究和一个实例。 (C)2016 Elsevier B.V.保留所有权利。

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