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An asymptotic expansion of Wishart distribution when the population eigenvalues are infinitely dispersed

机译:当种群特征值无限分散时,Wishart分布的渐近展开

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Takemura and Sheena [A. Takemura, Y. Sheena, Distribution of eigenvalues and eigenvectors of Wishart matrix when the population eigenvalues are infinitely dispersed and its application to minimax estimation of covariance matrix, J. Multivariate Anal. 94 (2005) 271-299] derived the asymptotic joint distribution of the eigenvalues and the eigenvectors of a Wishart matrix when the population eigenvalues become infinitely dispersed. They also showed necessary conditions for an estimator of the population covariance matrix to be tail minimax for typical loss functions by calculating the asymptotic risk of the estimator. In this paper, we further examine those distributions and risks by means of an asymptotic expansion. We obtain the asymptotic expansion of the distribution function of relevant elements of the sample eigenvalues and eigenvectors. We also derive the asymptotic expansion of the risk function of a scale and orthogonally equivariant estimator with respect to Stein's loss. As an application, we prove non-minimaxity of Stein's and Haff's estimators, which has been an open problem for a long time.
机译:竹村和希娜[A. Takemura,Y. Sheena,人口特征值无限分散时Wishart矩阵的特征值和特征向量的分布及其在协方差矩阵的极小极大估计中的应用,J。多元分析。 94(2005)271-299]推导出当种群特征值无限分散时Wishart矩阵的特征值和特征向量的渐近联合分布。他们还通过计算估计量的渐近风险,为总体协方差矩阵的估计量成为典型损失函数的尾部极小极大值提供了必要条件。在本文中,我们通过渐近展开进一步检查那些分布和风险。我们获得样本特征值和特征向量的相关元素的分布函数的渐近展开。我们还推导了关于斯坦因损失的尺度和正交等变估计量的风险函数的渐近展开。作为应用,我们证明了Stein和Haff估计的非极小性,这在很长一段时间以来一直是一个开放的问题。

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