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Testing for Common Principal Components under Heterokurticity

机译:异质性下的通用主成分测试

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The so-called common principal components (CPC) model, in which the covariance matrices £, of m populations are assumed to have identical eigenvectors, was introduced by Flury [Flury, B. (1984), 'Common Principal Components in k Groups', Journal of the American Statistical Association, 79, 892-898]. Gaussian parametric inference methods [Gaussian maximum-likelihood estimation and Gaussian likelihood ratio test (LRT)] have been fully developed for this model, but their validity does not extend beyond the case of elliptical densities with common Gaussian kurtosis. A non-Gaussian (but still homokurtic) extension of Flury's Gaussian LRT for the hypothesis of CPC [Flury, B. (1984), 'Common Principal Components in k Groups', Journal of the American Statistical Association, 79, 892-898] is proposed in Boik [Boik, J.R. (2002), 'Spectral Models for Covariance Matrices', Biometrika, 89, 159-182], see also Boente and Orellana [Boente, G., and Orellana, L. (2001), 'A Robust Approach to Common Principal Components', in Statistics in Genetics and in the Environmental Sciences, eds. Sciences Fernholz, S. Morgenthaler, and W. Stahel, Basel: Birkhauser, pp. 117-147] and Boente, Pires and Rodrigues [Boente, G., Pires, A.M., and Rodrigues I.M. (2009), 'Robust Tests for the Common Principal Components Model', Journal of Statistical Planning and Inference, 139, 1332-1347] for robust versions. In this paper, we show how Flury's LRT can be modified into a pseudo-Gaussian test which remains valid under arbitrary, hence possibly heterokurtic, elliptical densities with finite fourth-order moments, while retaining its optimality features at the Gaussian.
机译:Flury [Flury,B.(1984),'k个组中的通用主成分']引入了所谓的通用主成分(CPC)模型,其中m个种群的协方差矩阵have具有相同的特征向量。 ,《美国统计协会杂志》,第79卷,第892-898页]。高斯参数推论方法[高斯最大似然估计和高斯似然比检验(LRT)]已经为该模型充分开发,但其有效性并没有超出具有常见高斯峰度的椭圆密度的情况。针对CPC假设的Flury高斯LRT的非高斯(但仍然是同调)扩展[Flury,B.(1984),'k组中的共同主成分',美国统计协会杂志,79,892-898]在Boik [Boik,JR(2002),'Spectral Models for Covariance Matrices',Biometrika,89,159-182]中提出,另请参见Boente和Orellana [Boente,G.和Orellana,L.(2001),' 《遗传学和环境科学中的统计数据的鲁棒方法》。科学Fernholz,S.Morgenthaler和W.Stahel,巴塞尔:Birkhauser,第117-147页]和Boente,Pires和Rodrigues [Boente,G.,Pires,AM和Rodrigues IM(2009),“通用主成分模型”,统计计划和推断杂志,第139页,1332-1347]。在本文中,我们展示了如何将Flury的LRT修改为伪高斯检验,该检验在任意的,因此具有有限四阶矩的异质椭圆椭圆密度下仍然有效,同时在高斯范围内保持其最优性。

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