Covariance Estimation: The GLM and Regularization Perspectives
Mohsen Pourahmadi

TL;DR
This paper surveys methods for covariance matrix estimation, emphasizing regression-based approaches like Cholesky decomposition and regularization techniques, highlighting their advantages in high-dimensional settings and their interpretability.
Contribution
It unifies covariance estimation perspectives through regression formulations, discusses advantages of Cholesky-based methods, and reviews regularization techniques with theoretical insights.
Findings
Regression-based covariance estimation guarantees positive definiteness.
Cholesky decomposition offers interpretable, unconstrained parameterization.
Elementwise regularization methods have favorable asymptotic properties.
Abstract
Finding an unconstrained and statistically interpretable reparameterization of a covariance matrix is still an open problem in statistics. Its solution is of central importance in covariance estimation, particularly in the recent high-dimensional data environment where enforcing the positive-definiteness constraint could be computationally expensive. We provide a survey of the progress made in modeling covariance matrices from two relatively complementary perspectives: (1) generalized linear models (GLM) or parsimony and use of covariates in low dimensions, and (2) regularization or sparsity for high-dimensional data. An emerging, unifying and powerful trend in both perspectives is that of reducing a covariance estimation problem to that of estimating a sequence of regression problems. We point out several instances of the regression-based formulation. A notable case is in sparse…
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