4.6 Article

OPERATOR NORM CONSISTENT ESTIMATION OF LARGE-DIMENSIONAL SPARSE COVARIANCE MATRICES

期刊

ANNALS OF STATISTICS
卷 36, 期 6, 页码 2717-2756

出版社

INST MATHEMATICAL STATISTICS
DOI: 10.1214/07-AOS559

关键词

Covariance matrices; correlation matrices; adjacency matrices; eigenvalues of covariance matrices; multivariate statistical analysis; high-dimensional inference; random matrix theory; sparsity; beta-sparsity

资金

  1. NSF [DMS-06-05169]
  2. SANSI

向作者/读者索取更多资源

Estimating covariance matrices is a problem of fundamental importance in multivariate statistics. In practice it is increasingly frequent to work with data matrices X of dimension if x p, where p and n are both large. Results from random matrix theory show very clearly that in this setting, standard estimators like the sample covariance matrix perform in general very poorly. In this large n, large p setting, it is sometimes the case that practitioners are willing to assume that many elements of the population covariance matrix are equal to 0, and hence this matrix is sparse. We develop an estimator to handle this situation. The estimator is shown to be consistent in operator norm, when, for instance, we have p asymptotic to n as n -> infinity. In other words the largest singular value of the difference between the estimator and the population covariance matrix goes to zero. This implies consistency of all the eigenvalues and consistency of eigenspaces associated to isolated eigenvalues. We also propose a notion of sparsity for matrices, that is, compatible with spectral analysis and is independent of the ordering of the variables.

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