A parallel splitting ALM-based algorithm for separable convex programming

被引:0
作者
Shengjie Xu
Bingsheng He
机构
[1] Harbin Institute of Technology,Department of Mathematics
[2] Southern University of Science and Technology,Department of Mathematics
[3] Nanjing University,Department of Mathematics
来源
Computational Optimization and Applications | 2021年 / 80卷
关键词
Convex programming; Augmented Lagrangian method; Jacobian decomposition; Parallel computing; Operator splitting methods; 90C25; 90C06; 90C33;
D O I
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学科分类号
摘要
The augmented Lagrangian method (ALM) provides a benchmark for solving the canonical convex optimization problem with linear constraints. The direct extension of ALM for solving the multiple-block separable convex minimization problem, however, is proved to be not necessarily convergent in the literature. It has thus inspired a number of ALM-variant algorithms with provable convergence. This paper presents a novel parallel splitting method for the multiple-block separable convex optimization problem with linear equality constraints, which enjoys a larger step size compared with the existing parallel splitting methods. We first show that a fully Jacobian decomposition of the regularized ALM can contribute a descent direction yielding the contraction of proximity to the solution set; then, the new iterate is generated via a simple correction step with an ignorable computational cost. We establish the convergence analysis for the proposed method, and then demonstrate its numerical efficiency by solving an application problem arising in statistical learning.
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页码:831 / 851
页数:20
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