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Scalable sparse covariance estimation via self-concordance

13 May 2014
Anastasios Kyrillidis
Rabeeh Karimi Mahabadi
Quoc Tran-Dinh
V. Cevher
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Abstract

We consider the class of convex minimization problems, composed of a self-concordant function, such as the log⁡det⁡\log\detlogdet metric, a convex data fidelity term h(⋅)h(\cdot)h(⋅) and, a regularizing -- possibly non-smooth -- function g(⋅)g(\cdot)g(⋅). This type of problems have recently attracted a great deal of interest, mainly due to their omnipresence in top-notch applications. Under this \emph{locally} Lipschitz continuous gradient setting, we analyze the convergence behavior of proximal Newton schemes with the added twist of a probable presence of inexact evaluations. We prove attractive convergence rate guarantees and enhance state-of-the-art optimization schemes to accommodate such developments. Experimental results on sparse covariance estimation show the merits of our algorithm, both in terms of recovery efficiency and complexity.

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