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Title: A proximal point dual Newton algorithm for solving group graphical Lasso problems
Authors: Zhang, Y
Zhang, N
Sun, D 
Toh, KC
Issue Date: 2020
Source: SIAM journal on optimization, 2020, v. 30, no. 3, p. 2197-2220
Abstract: Undirected graphical models have been especially popular for learning the conditional independence structure among a large number of variables where the observations are drawn independently and identically from the same distribution. However, many modern statistical problems would involve categorical data or time-varying data, which might follow different but related underlying distributions. In order to learn a collection of related graphical models simultaneously, various joint graphical models inducing sparsity in graphs and similarity across graphs have been proposed. In this paper, we aim to propose an implementable proximal point dual Newton algorithm (PPDNA) for solving the group graphical Lasso model, which encourages a shared pattern of sparsity across graphs. Though the group graphical Lasso regularizer is nonpolyhedral, the asymptotic superlinear convergence of our proposed method PPDNA can be obtained by leveraging on the local Lipschitz continuity of the Karush--Kuhn--Tucker solution mapping associated with the group graphical Lasso model. A variety of numerical experiments on real data sets illustrates that the PPDNA for solving the group graphical Lasso model can be highly efficient and robust.
Keywords: Group graphical Lasso
Proximal point algorithm
Semismooth Newton method
Lipschitz continuity
Publisher: Society for Industrial and Applied Mathematics
Journal: SIAM journal on optimization 
ISSN: 1052-6234
EISSN: 1095-7189
DOI: 10.1137/19M1267830
Rights: © 2020 Society for Industrial and Applied Mathematics
The following publication Zhang, Y., Zhang, N., Sun, D., & Toh, K. C. (2020). A proximal point dual newton algorithm for solving group graphical lasso problems. SIAM Journal on Optimization, 30(3), 2197-2220 is available at https://doi.org/10.1137/19M1267830.
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