High-dimensional covariance estimation by minimizing $\ell_1$-penalized log-determinant divergence
Pradeep Ravikumar, Martin J. Wainwright, Garvesh Raskutti, Bin Yu

TL;DR
This paper proposes a high-dimensional covariance and inverse covariance matrix estimation method using an $ ext{l}_1$-penalized log-determinant divergence, analyzing its consistency and structure recovery in complex, large-scale Gaussian graphical models.
Contribution
It introduces a novel $ ext{l}_1$-penalized estimator for high-dimensional inverse covariance matrices and provides theoretical guarantees for its consistency and structure recovery.
Findings
Estimator is consistent in maximum-norm
Achieves improved convergence rates for certain graph structures
Correctly identifies the zero pattern of the concentration matrix
Abstract
Given i.i.d. observations of a random vector , we study the problem of estimating both its covariance matrix , and its inverse covariance or concentration matrix {.} We estimate by minimizing an -penalized log-determinant Bregman divergence; in the multivariate Gaussian case, this approach corresponds to -penalized maximum likelihood, and the structure of is specified by the graph of an associated Gaussian Markov random field. We analyze the performance of this estimator under high-dimensional scaling, in which the number of nodes in the graph , the number of edges and the maximum node degree , are allowed to grow as a function of the sample size . In addition to the parameters , our analysis identifies other key quantities covariance matrix ; and (b) the…
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Taxonomy
TopicsAdvanced Statistical Methods and Models · Statistical Methods and Inference · Statistical Mechanics and Entropy
