高斯马尔可夫随机场下极大极小凹惩罚稀疏图的学习

Tatsuya Koyakumaru, M. Yukawa, Eduardo Pavez, Antonio Ortega
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引用次数: 6

摘要

本文提出了一种从数据中学习稀疏图的凸解析框架。虽然我们的问题公式的灵感来自于使用所谓的组合图拉普拉斯框架的图形套套的扩展,但关键的区别是使用了$\ell_1$范数的非凸替代方案来获得具有更好可解释性的图。具体来说,我们使用弱凸极小极大凹惩罚($\ell_1$范数与Huber函数之间的差异),已知它可以产生比$\ell_1$估计偏差更低的回归问题的稀疏解。在我们的框架中,图拉普拉斯在优化中被对应于其上三角部分的向量的线性变换所取代。通过依靠莫罗分解的重新表述,我们证明了通过向成本函数引入二次函数来保证整体凸性。利用原对偶分裂方法可以有效地求解该问题,并给出了该方法收敛性可证明的允许条件。数值算例表明,该方法在合理的CPU时间内显著优于现有的图学习方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning Sparse Graph with Minimax Concave Penalty under Gaussian Markov Random Fields
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 $\ell_1$ norm to attain graphs with better interpretability. Specifically, we use the weakly-convex minimax concave penalty (the difference between the $\ell_1$ norm and the Huber function) which is known to yield sparse solutions with lower estimation bias than $\ell_1$ 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.
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