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首页> 外文期刊>SIAM Journal on Optimization: A Publication of the Society for Industrial and Applied Mathematics >ON FULL JACOBIAN DECOMPOSITION OF THE AUGMENTED LAGRANGIAN METHOD FOR SEPARABLE CONVEX PROGRAMMING
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ON FULL JACOBIAN DECOMPOSITION OF THE AUGMENTED LAGRANGIAN METHOD FOR SEPARABLE CONVEX PROGRAMMING

机译:可分离凸规划的增强拉格朗日方法的全雅可比分解

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摘要

The augmented Lagrangian method (ALM) is a benchmark for solving a convex minimization model with linear constraints. We consider the special case where the objective is the sum of m functions without coupled variables. For solving this separable convex minimization model, it is usually required to decompose the ALM subproblem at each iteration into m smaller subproblems, each of which only involves one function in the original objective. Easier subproblems capable of taking full advantage of the functions' properties individually could thus be generated. In this paper, we focus on the case where full Jacobian decomposition is applied to ALM subproblems, i.e., all the decomposed ALM subproblems are eligible for parallel computation at each iteration. For the first time, we show, by an example, that the ALM with full Jacobian decomposition could be divergent. To guarantee the convergence, we suggest combining a relaxation step and the output of the ALM with full Jacobian decomposition. A novel analysis is presented to illustrate how to choose refined step sizes for this relaxation step. Accordingly, a new splitting version of the ALM with full Jacobian decomposition is proposed. We derive the worst-case O(1/k) convergence rate measured by the iteration complexity (where k represents the iteration counter) in both the ergodic and nonergodic senses for the new algorithm. Finally, some numerical results are reported to show the efficiency of the new algorithm.
机译:增强拉格朗日方法(ALM)是求解具有线性约束的凸极小化模型的基准。我们考虑一种特殊情况,即目标是不带耦合变量的m个函数的总和。为了求解此可分离的凸极小化模型,通常需要在每次迭代时将ALM子问题分解为m个较小的子问题,每个子问题仅涉及原始目标中的一个函数。这样就可以生成能够充分利用功能属性的子问题。在本文中,我们关注于将完全Jacobian分解应用于ALM子问题的情况,即所有分解后的ALM子问题都可以在每次迭代时进行并行计算。通过示例,我们第一次展示了具有完全雅可比分解的ALM可能是发散的。为了保证收敛,建议将松弛步骤和ALM的输出与完整的雅可比分解相结合。提出了一种新颖的分析方法来说明如何为该松弛步骤选择精炼的步长。因此,提出了具有完全雅可比分解的ALM的新拆分版本。我们推导了在新算法的遍历和非遍历意义上由迭代复杂度(其中k表示迭代计数器)测得的最坏情况O(1 / k)收敛速率。最后,一些数值结果被报道以表明新算法的有效性。

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