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Parallel computing subgradient method for nonsmooth convex optimization over the intersection of fixed point sets of nonexpansive mappings

机译:非膨胀映射不动点集交集上非光滑凸优化的并行计算次梯度法

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Nonsmooth convex optimization problems are solved over fixed point sets of nonexpansive mappings by using a distributed optimization technique. This is done for a networked system with an operator, who manages the system, and a finite number of users, by solving the problem of minimizing the sum of the operator’s and users’ nondifferentiable, convex objective functions over the intersection of the operator’s and users’ convex constraint sets in a real Hilbert space. We assume that each of their constraint sets can be expressed as the fixed point set of an implementable nonexpansive mapping. This setting allows us to discuss nonsmooth convex optimization problems in which the metric projection onto the constraint set cannot be calculated explicitly. We propose a parallel subgradient algorithm for solving the problem by using the operator’s attribution such that it can communicate with all users. The proposed algorithm does not use any proximity operators, in contrast to conventional parallel algorithms for nonsmooth convex optimization. We first study its convergence property for a constant step-size rule. The analysis indicates that the proposed algorithm with a small constant step size approximates a solution to the problem. We next consider the case of a diminishing step-size sequence and prove that there exists a subsequence of the sequence generated by the algorithm which weakly converges to a solution to the problem. We also give numerical examples to support the convergence analyses.
机译:通过使用分布式优化技术,解决了非扩张映射的定点集上的非光滑凸优化问题。通过解决将运营商和用户的不可微凸目标函数之和最小化的问题,可以解决由运营商管理该系统以及有限数量用户的网络系统的问题。在真实的希尔伯特空间中的凸约束集。我们假设它们的每个约束集都可以表示为可实现的非扩展映射的不动点集。此设置使我们可以讨论非光滑凸优化问题,在该问题中无法明确计算出约束集上的度量投影。我们提出了一种并行次梯度算法,通过使用运营商的归属来解决该问题,从而可以与所有用户进行交流。与用于非平滑凸优化的常规并行算法相比,该算法不使用任何接近算子。我们首先研究恒定步长规则的收敛性。分析表明,所提出的算法具有较小的恒定步长,可以近似解决该问题。接下来,我们考虑步长序列减小的情况,并证明该算法生成的序列存在一个子序列,该子序列弱收敛于该问题的解决方案。我们还给出了数值示例来支持收敛性分析。

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