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Weighted chi-squared tests for partial common principal component subspaces

机译:部分公共主成分子空间的加权卡方检验

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We consider tests of the null hypothesis that g covariance matrices have a partial common principal component subspace of dimension s. Our approach uses a dimensionality matrix which has its rank equal to s when the hypothesis holds. The test can then be based on a statistic computed from the eigenvalues of an estimate of this dimensionality matrix. The asymptotic distribution of this' statistic is that of a linear combination of independent one-degree-of-freedom chi-squared random variables. Simulation results indicate that this test yields significance levels that come closer to the nominal level than do those of a previously proposed method. The procedure is also extended to a test that g correlation matrices have a partial common principal component subspace. [References: 16]
机译:我们考虑零假设的检验,即g个协方差矩阵具有维s的部分公共主成分子空间。当假设成立时,我们的方法使用维数矩阵,该维数矩阵的秩等于s。然后,可以基于从该维度矩阵的估计值的特征值计算出的统计量,进行测试。该统计量的渐近分布是独立的一自由度卡方随机变量的线性组合。仿真结果表明,与先前提出的方法相比,该测试产生的显着性水平更接近标称水平。该过程还扩展到g相关矩阵具有部分公共主成分子空间的测试。 [参考:16]

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