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
- FWCI
- 17.05
- Percentile
- 100%
- References
- 37
Authors
2Topics & keywords
- Mathematics
- Covariance
- Rational quadratic covariance function
- Thresholding
- Covariance matrix
- Gaussian
- Covariance intersection
- Matérn covariance function
- Climate action