JOURNAL ARTICLE

Low separation rank covariance estimation using Kronecker product expansions

Abstract

This paper presents a new method for estimating high dimensional covariance matrices. Our method, permuted rank-penalized least-squares (PRLS), is based on Kronecker product series expansions of the true covariance matrix. Assuming an i.i.d. Gaussian random sample, we establish high dimensional rates of convergence to the true covariance as both the number of samples and the number of variables go to infinity. For covariance matrices of low separation rank, our results establish that PRLS has significantly faster convergence than the standard sample covariance matrix (SCM) estimator. In addition, this framework allows one to tradeoff estimation error for approximation error, thus providing a scalable covariance estimation framework in terms of separation rank, an analog to low rank approximation of covariance matrices [1]. The MSE convergence rates generalize the high dimensional rates recently obtained for the ML Flip-flop algorithm [2], [3].

Keywords:
Covariance Mathematics Covariance matrix Kronecker product Rank (graph theory) Covariance intersection Estimation of covariance matrices Estimator Law of total covariance Covariance function Applied mathematics Rate of convergence Rational quadratic covariance function Matérn covariance function Statistics Kronecker delta Algorithm Computer science Combinatorics

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11
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45
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0.61
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Citation History

Topics

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