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Testing equality of standardized generalized variances of k multivariate normal populations with arbitrary dimensions

机译:测试任意维度的k个多元正态总体的标准化广义方差的相等性

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For a p-variate normal distribution with covariance matrix Sigma, the standardized generalized variance (SGV) is defined as the positive pth root of |Sigma| and used as a measure of variability. Testing equality of the SGVs, for comparing the variability of multivariate normal distributions with different dimensions, is still regarded as matter of interest. The most classical test for this problem is the likelihood ratio test (LRT). In this article, testing equality of the SGVs of k multivariate normal distributions with possibly unequal dimensions is studied. To test this hypothesis, two approximations for the null distribution of the LRT statistic are proposed based on the well known Welch-Satterthwaite and Bartlett adjustment distribution approximation methods. Furthermore, the high-dimensional behavior of these approximated distributions is also investigated. Through a wide simulation study: first, the performance of the proposed tests with the classical LRT is compared in terms of type I error, power, and alpha adjusted equivalents; second, the robustness of the procedures with respect to departures from normality assumption is evaluated. Finally, the proposed methods are illustrated with two real data examples.
机译:对于具有协方差矩阵Sigma的p变量正态分布,将标准化广义方差(SGV)定义为| Sigma |的正pth根并用作衡量差异性的指标。为了比较具有不同维度的多元正态分布的变异性,测试SGV的相等性仍然被认为是关注的问题。针对此问题的最经典测试是似然比测试(LRT)。在本文中,研究了检验k个多元正态分布的SGV的相等性,其中维数可能不相等。为了检验该假设,基于众所周知的Welch-Satterthwaite和Bartlett调整分布近似方法,提出了LRT统计量的零分布的两个近似值。此外,还研究了这些近似分布的高维行为。通过广泛的仿真研究:首先,从类型I误差,功率和经过alpha调整的等效项方面比较了使用经典LRT提出的测试的性能;第二,评估程序偏离正常性假设的稳健性。最后,用两个真实的数据实例说明了所提出的方法。

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