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A test of sphericity for high-dimensional data and its application for detection of divergently spiked noise

机译:高维数据的球形度测试及其在发散尖峰噪声检测中的应用

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In this article, we consider a test of the sphericity for high-dimensional covariance matrices. We produce a test statistic by using the extended cross-data-matrix (ECDM) methodology. We show that the ECDM test statistic is based on an unbiased estimator of a sphericity measure. In addition, the ECDM test statistic enjoys consistency properties and the asymptotic normality in high-dimensional settings. We propose a new test procedure based on the ECDM test statistic and evaluate its asymptotic size and power theoretically and numerically. We give a two-stage sampling scheme so that the test procedure can ensure a prespecified level both for the size and power. We apply the test procedure to detect divergently spiked noise in high-dimensional statistical analysis. We analyze gene expression data by the proposed test procedure.
机译:在本文中,我们考虑对高维协方差矩阵的球度进行测试。我们通过使用扩展的跨数据矩阵(ECDM)方法来生成测试统计信息。我们显示ECDM测试统计数据基于球形度度量的无偏估计量。此外,ECDM测试统计量在高维设置中具有一致性属性和渐近正态性。我们提出了一种基于ECDM测试统计数据的新测试程序,并从理论和数值上评估了它的渐近大小和幂。我们提供了一个两阶段的采样方案,以便测试过程可以确保在大小和功耗方面达到预定水平。在高维统计分析中,我们应用测试程序来检测发散尖峰噪声。我们通过提出的测试程序分析基因表达数据。

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