articleJan 1, 2007Closed access

Covariance regularization by thresholding

University of Michigan · University of California, Berkeley

Abstract

This paper considers regularizing a covariance matrix of p variables estimated from n observations, by hard thresholding. We show that the thresholded estimate is consistent in the operator norm as long as the true covariance matrix is sparse in a suitable sense, the variables are Gaussian or sub-Gaussian, and (log p)/n→0, and obtain explicit rates. The results are uniform over families of covariance matrices which satisfy a fairly natural notion of sparsity. We discuss an intuitive resampling scheme for threshold selection and prove a general cross-validation result that justifies this approach. We also compare thresholding to other covariance estimators in simulations and on an example from climate data. 1.…

Citation impact

1,187
total citations
FWCI
17.05
Percentile
100%
References
37
Citations per year

Authors

2

Topics & keywords

Keywords
  • Mathematics
  • Covariance
  • Rational quadratic covariance function
  • Thresholding
  • Covariance matrix
  • Gaussian
  • Covariance intersection
  • Matérn covariance function
UN Sustainable Development Goals
  • Climate action
No related works found for this paper.