4.6 Article

Regularized estimation of large covariance matrices

Journal

ANNALS OF STATISTICS
Volume 36, Issue 1, Pages 199-227

Publisher

INST MATHEMATICAL STATISTICS-IMS
DOI: 10.1214/009053607000000758

Keywords

covariance matrix; regularization; banding; Cholesky decomposition

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This paper considers estimating a covariance matrix of p variables from n observations by either banding or tapering the sample covariance matrix, or estimating a banded version of the inverse of the covariance. We show that these estimates are consistent in the operator norm as long as (log p)/n -> 0, and obtain explicit rates. The results are uniform over some fairly natural well-conditioned families of covariance matrices. We also introduce an analogue of the Gaussian white noise model and show that if the population covariance is embeddable in that model and well-conditioned, then the banded approximations produce consistent estimates of the eigenvalues and associated eigenvectors of the covariance matrix. The results can be extended to smooth versions of banding and to non-Gaussian distributions with sufficiently short tails. A resampling approach is proposed for choosing the banding parameter in practice. This approach is illustrated numerically on both simulated and real data.

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