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Inferring the eigenvalues of covariance matrices from limited, noisy data

机译:从有限的嘈杂数据中推断协方差矩阵的特征值

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摘要

The eigenvalue spectrum of covariance matrices is of central importance to a number of data analysis techniques. Usually, the sample covariance matrix is constructed from a limited number of noisy samples. We describe a method of inferring the true eigenvalue spectrum from the sample spectrum. Results of Silverstein (1986), which characterize the eigenvalue spectrum of the noise covariance matrix, and inequalities between the eigenvalues of Hermitian matrices are used to infer probability densities for the eigenvalues of the noise-free covariance matrix, using Bayesian inference. Posterior densities for each eigenvalue are obtained, which yield error estimates. The evidence framework gives estimates of the noise variance and permits model order selection by estimating the rank of the covariance matrix. The method is illustrated with numerical examples.
机译:协方差矩阵的特征值谱对于许多数据分析技术至关重要。通常,样本协方差矩阵是由有限数量的噪声样本构成的。我们描述了一种从样本光谱中推断出真实特征值光谱的方法。 Silverstein(1986)的结果表征了噪声协方差矩阵的特征值谱,而埃尔米特矩阵的特征值之间的不等式则通过贝叶斯推断来推论无噪声协方差矩阵的特征值的概率密度。获得每个特征值的后验密度,其产生误差估计。证据框架给出了噪声方差的估计,并通过估计协方差矩阵的秩来允许选择模型顺序。通过数值示例说明了该方法。

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