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首页> 外文期刊>Journal of Multivariate Analysis: An International Journal >Shrinkage estimators for large covariance matrices in multivariate real and complex normal distributions under an invariant quadratic loss
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Shrinkage estimators for large covariance matrices in multivariate real and complex normal distributions under an invariant quadratic loss

机译:不变二次损失下多元实和复正态分布中大协方差矩阵的收缩估计

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摘要

The problem of estimating large covariance matrices of multivariate real normal and complex normal distributions is considered when the dimension of the variables is larger than the number of samples. The Stein-Haff identities and calculus on eigenstructure for singular Wishart matrices are developed for real and complex cases, respectively. By using these techniques, the unbiased risk estimates for certain classes of estimators for the population covariance matrices under invariant quadratic loss functions are obtained for real and complex cases, respectively. Based on the unbiased risk estimates, shrinkage estimators which are counterparts of the estimators due to Haff [L.R. Haff, Empirical Bayes estimation of the multivariate normal covariance matrix, Ann. Statist. 8 (1980) 586-697] are shown to improve upon the best scalar multiple of the empirical covariance matrix under the invariant quadratic loss functions for both real and complex multivariate normal distributions in the situation where the dimension of the variables is larger than the number of samples.
机译:当变量的维数大于样本数时,会考虑估计多元实数正态分布和复数正态分布的大协方差矩阵的问题。分别针对真实情况和复杂情况开发了奇异Wishart矩阵的Stein-Haff等式和本征结构演算。通过使用这些技术,分别针对真实和复杂情况,获得了在不变二次损失函数下总体协方差矩阵的某些类估计器的无偏风险估计。基于无偏风险估计,收缩估计是由于Haff [L.R. Haff,多元正态协方差矩阵的经验贝叶斯估计,Ann。统计员。 (8)(1980)586-697]表明在变量的维数大于数量的情况下,对于实数和复数正态分布,在不变二次损失函数下,经验协方差矩阵的最佳标量倍数都有所改善样本。

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