首页> 外文期刊>IMA Journal of Numerical Analysis >Optimal proximal augmented Lagrangian method and its application to full Jacobian splitting for multi-block separable convex minimization problems
【24h】

Optimal proximal augmented Lagrangian method and its application to full Jacobian splitting for multi-block separable convex minimization problems

机译:最优近邻扩充拉格朗日方法及其在多块可分离凸最小化问题的全雅可比分裂中的应用

获取原文
获取原文并翻译 | 示例
           

摘要

The augmented Lagrangian method (ALM) is fundamental in solving convex programming problems with linear constraints. The proximal version of ALM, which regularizes ALM's subproblem over the primal variable at each iteration by an additional positive-definite quadratic proximal term, has been well studied in the literature. In this paper we show that it is not necessary to employ a positive-definite quadratic proximal term for the proximal ALM and the convergence can be still ensured if the positive definiteness is relaxed to indefiniteness by reducing the proximal parameter. An indefinite proximal version of the ALM is thus proposed for the generic setting of convex programming problems with linear constraints. We show that our relaxation is optimal in the sense that the proximal parameter cannot be further reduced. The consideration of indefinite proximal regularization is particularly meaningful for generating larger step sizes in solving ALM's primal subproblems. When the model under discussion is separable in the sense that its objective function consists of finitely many additive function components without coupled variables, it is desired to decompose each ALM's subproblem over the primal variable in Jacobian manner, replacing the original one by a sequence of easier and smaller decomposed subproblems, so that parallel computation can be applied. This full Jacobian splitting version of the ALM is known to be not necessarily convergent, and it has been studied in the literature that its convergence can be ensured if all the decomposed subproblems are further regularized by sufficiently large proximal terms. But how small the proximal parameter could be is still open. The other purpose of this paper is to show the smallest proximal parameter for the full Jacobian splitting version of ALM for solving multi-block separable convex minimization models.
机译:增强拉格朗日方法(ALM)是解决线性约束凸规划问题的基础。在文献中已经对ALM的近端版本进行了很好的研究,该版本通过附加的正定二次平方近端项在每次迭代中将ALM的子问题规范化在原始变量上。在本文中,我们表明,对于近端ALM不必采用正定二次方近项,如果通过减小近端参数将正定性放宽为不确定性,仍可以确保收敛。因此,对于具有线性约束的凸规划问题的一般设置,提出了ALM的不确定近端版本。我们表明,在不能进一步减小近端参数的意义上,我们的松弛是最佳的。对于解决ALM的原始子问题,生成不确定的近端正则化的考虑尤其有意义。当所讨论的模型在其目标函数由有限多个加性函数组成且没有耦合变量的意义上是可分离的时,则希望以雅可比方式分解原始变量上的每个ALM子问题,用一系列更简单的序列替换原始模型以及较小的分解子问题,因此可以应用并行计算。众所周知,ALM的这种完全雅可比分裂版本不一定是收敛的,并且在文献中已经进行了研究,如果所有分解的子问题都通过足够大的近端项进一步进行正则化,则可以确保其收敛。但是近端参数可能有多小仍然是未知数。本文的另一个目的是显示ALM的完整Jacobian分裂版本的最小近端参数,用于求解多块可分离凸最小化模型。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号