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Dimension Reduction for Detecting a Difference in Two High-Dimensional Mean Vectors

机译:用于检测两个高维平均向量的差异的尺寸减少

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We consider the efficacy of a proposed linear-dimension-reduction method to potentially increase the powers of five hypothesis tests for the difference of two high-dimensional multivariate-normal population-mean vectors with the assumption of homoscedastic covariance matrices. We use Monte Carlo simulations to contrast the empirical powers of the five high-dimensional tests by using both the original data and dimension-reduced data. From the Monte Carlo simulations, we conclude that a test by Thulin [1], when performed with post-dimension-reduced data, yielded the best omnibus power for detecting a difference between two high-dimensional population-mean vectors. We also illustrate the utility of our dimension-reduction method real data consisting of genetic sequences of two groups of patients with Crohn’s disease and ulcerative colitis.
机译:我们考虑提出的线性尺寸减少方法的功效,以潜在地增加五个假设试验的功率,以便在同性恋协方差矩阵的假设中逐渐增加两个高维多元普通人口平均载体的差异。我们使用Monte Carlo模拟来将五维高维测试的经验力与原始数据和尺寸减少的数据相比。从蒙特卡罗模拟中,我们得出结论,当用尺寸减小的数据进行时,通过Thulin [1]的测试产生了用于检测两个高维人口平均向量之间的差异的最佳综合作用。我们还说明了我们的维度减少方法实际数据的实用性,该数据由两组患者患有克罗恩病和溃疡性结肠炎的遗传序列组成。

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