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Stable estimation of a covariance matrix guided by nuclear norm penalties

机译:核规范惩罚指导下的协方差矩阵的稳定估计

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Estimation of a covariance matrix or its inverse plays a central role in many statistical methods. For these methods to work reliably, estimated matrices must not only be invertible but also well-conditioned. The current paper introduces a novel prior to ensure a well-conditioned maximum a posteriori (MAP) covariance estimate. The prior shrinks the sample covariance estimator towards a stable target and leads to a MAP estimator that is consistent and asymptotically efficient. Thus, the MAP estimator gracefully transitions towards the sample covariance matrix as the number of samples grows relative to the number of covariates. The utility of the MAP estimator is demonstrated in two standard applications - discriminant analysis and EM clustering - in challenging sampling regimes.
机译:在许多统计方法中,协方差矩阵或其逆的估计起着核心作用。为了使这些方法可靠地工作,估计矩阵不仅必须是可逆的,而且必须条件良好。当前论文介绍了一种新颖的方法,以确保条件良好的最大后验(MAP)协方差估计。先验将样本协方差估计量缩小到稳定的目标,并导致MAP估计量一致且渐近有效。因此,随着样本数量相对于协变量数量的增长,MAP估计器会向样本协方差矩阵平稳过渡。 MAP估计器的实用性在具有挑战性的采样方案中的两个标准应用中(判别分析和EM聚类)得到了证明。

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