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The Statistics and Mathematics of High Dimension Low Sample Size Asymptotics

机译:高维低样本量渐近性的统计和数学

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摘要

The aim of this paper is to establish several deep theoretical properties of principal component analysis for multiple-component spike covariance models. Our new results reveal an asymptotic conical structure in critical sample eigendirections under the spike models with distinguishable (or indistinguishable) eigenvalues, when the sample size and/or the number of variables (or dimension) tend to infinity. The consistency of the sample eigenvectors relative to their population counterparts is determined by the ratio between the dimension and the product of the sample size with the spike size. When this ratio converges to a nonzero constant, the sample eigenvector converges to a cone, with a certain angle to its corresponding population eigenvector. In the High Dimension, Low Sample Size case, the angle between the sample eigenvector and its population counterpart converges to a limiting distribution. Several generalizations of the multi-spike covariance models are also explored, and additional theoretical results are presented.
机译:本文的目的是为多分量峰值协方差模型建立主成分分析的几个深层理论特性。我们的新结果揭示了当样本大小和/或变量数量(或维数)趋于无穷大时,在具有可区分(或无法区分)特征值的尖峰模型下,关键样本特征方向上的渐近锥形结构。样本特征向量相对于总体样本特征向量的一致性由样本大小的尺寸与乘积与尖峰大小的乘积之比确定。当该比率收敛到一个非零常数时,样本特征向量收敛到一个圆锥体,该圆锥体与其对应的总体特征向量成一定角度。在高维,低样本量的情况下,样本特征向量与其总体对应物之间的角度收敛为有限分布。还探讨了多峰值协方差模型的几种概括,并提供了其他理论结果。

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