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Learning Sparse Graph with Minimax Concave Penalty under Gaussian Markov Random Fields

Signal Processing 2021-09-20 v1 Machine Learning

Abstract

This paper presents a convex-analytic framework to learn sparse graphs from data. While our problem formulation is inspired by an extension of the graphical lasso using the so-called combinatorial graph Laplacian framework, a key difference is the use of a nonconvex alternative to the 1\ell_1 norm to attain graphs with better interpretability. Specifically, we use the weakly-convex minimax concave penalty (the difference between the 1\ell_1 norm and the Huber function) which is known to yield sparse solutions with lower estimation bias than 1\ell_1 for regression problems. In our framework, the graph Laplacian is replaced in the optimization by a linear transform of the vector corresponding to its upper triangular part. Via a reformulation relying on Moreau's decomposition, we show that overall convexity is guaranteed by introducing a quadratic function to our cost function. The problem can be solved efficiently by the primal-dual splitting method, of which the admissible conditions for provable convergence are presented. Numerical examples show that the proposed method significantly outperforms the existing graph learning methods with reasonable CPU time.

Keywords

Cite

@article{arxiv.2109.08666,
  title  = {Learning Sparse Graph with Minimax Concave Penalty under Gaussian Markov Random Fields},
  author = {Tatsuya Koyakumaru and Masahiro Yukawa and Eduardo Pavez and Antonio Ortega},
  journal= {arXiv preprint arXiv:2109.08666},
  year   = {2021}
}

Comments

11 pages, 7 figures

R2 v1 2026-06-24T06:04:59.281Z