Adaptive Covariance Matrix Estimation Through Block Thresholding

Loading...
Thumbnail Image

Related Collections

Degree type

Discipline

Subject

adaptive estimation
block thresholding
covariance matrix
Frobenius norm
minimax estimation
optimal rate of convergence
spectral norm
Statistics and Probability

Funder

Grant number

License

Copyright date

Distributor

Related resources

Contributor

Abstract

Estimation of large covariance matrices has drawn considerable recent attention, and the theoretical focus so far has mainly been on developing a minimax theory over a fixed parameter space. In this paper, we consider adaptive covariance matrix estimation where the goal is to construct a single procedure which is minimax rate optimal simultaneously over each parameter space in a large collection. A fully data-driven block thresholding estimator is proposed. The estimator is constructed by carefully dividing the sample covariance matrix into blocks and then simultaneously estimating the entries in a block by thresholding. The estimator is shown to be optimally rate adaptive over a wide range of bandable covariance matrices. A simulation study is carried out and shows that the block thresholding estimator performs well numerically. Some of the technical tools developed in this paper can also be of independent interest.

Advisor

Date Range for Data Collection (Start Date)

Date Range for Data Collection (End Date)

Digital Object Identifier

Series name and number

Publication date

2012-01-01

Journal title

Annals of Statistics

Volume number

Issue number

Publisher

Publisher DOI

relationships.isJournalIssueOf

Comments

Recommended citation

Collection