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An Inverse Norm Sign Test of Location Parameter for High-Dimensional Data

机译:高维数据位置参数的逆规范符号测试

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We consider the one sample location testing problem for high-dimensional data, where the data dimension is potentially much larger than the sample size. We devise a novel inverse norm sign test (INST) that is consistent and has much improved power than many existing popular tests. We further construct a general class of weighted spatial sign tests which includes these existing tests, and show that INST is the optimal member within this class, in that it is consistent and is uniformly more powerful than all other members. We establish the asymptotic null distribution and local power property of the class of tests rigorously. Extensive numerical experiments demonstrate the superiority of INST in terms of both efficiency and robustness.
机译:我们考虑用于高维数据的一个样本位置测试问题,其中数据维度可能大得多大于样本大小。 我们设计了一种新的逆规范标志测试(Inst),这是一致的,并且具有比许多现有的流行测试更好的功率。 我们进一步构建了一般类的加权空间标志测试,包括这些现有测试,并显示该课程中的最佳成员,因为它是一致的,并且与所有其他成员均匀更强大。 我们严格地建立了渐近空分布和局部电力分布。 广泛的数值实验证明了效率和鲁棒性方面的超级性。

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