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A Proximal Gradient Algorithm for Decentralized Composite Optimization

机译:分散复合优化的近梯度算法。

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This paper proposes a decentralized algorithm for solving a consensus optimization problem defined in a static networked multi-agent system, where the local objective functions have the smooth+nonsmooth composite form. Examples of such problems include decentralized constrained quadratic programming and compressed sensing problems, as well as many regularization problems arising in inverse problems, signal processing, and machine learning, which have decentralized applications. This paper addresses the need for efficient decentralized algorithms that take advantages of proximal operations for the nonsmooth terms. We propose a proximal gradient exact first-order algorithm (PG-EXTRA) that utilizes the composite structure and has the best known convergence rate. It is a nontrivial extension to the recent algorithm EXTRA. At each iteration, each agent locally computes a gradient of the smooth part of its objective and a proximal map of the nonsmooth part, as well as exchanges information with its neighbors. The algorithm is “exact” in the sense that an exact consensus minimizer can be obtained with a fixed step size, whereas most previous methods must use diminishing step sizes. When the smooth part has Lipschitz gradients, PG-EXTRA has an ergodic convergence rate of in terms of the first-order optimality residual. When the smooth part vanishes, PG-EXTRA reduces to P-EXTRA, an algorithm without the gradients (so no “G” in the name), which has a slightly improved convergence rate at in a standard (non-ergodic) sense. Numerical experiments demonstrate effectiveness of PG-EXTRA and validate our convergence results
机译:针对局部目标函数具有光滑+非光滑复合形式的静态网络化多智能体系统中定义的共识优化问题,提出了一种去中心化算法。这样的问题的示例包括分散约束的二次规划和压缩感测问题,以及在逆问题,信号处理和机器学习中产生的许多正则化问题,这些问题具有分散的应用。本文提出了对有效分散算法的需求,该算法需要对非平滑项利用近端操作。我们提出了一种近端梯度精确一阶算法(PG-EXTRA),该算法利用了复合结构并具有最著名的收敛速度。它是最新算法EXTRA的重要扩展。在每次迭代时,每个代理都会本地计算其目标的平滑部分的斜率和非平滑部分的近端贴图,并与其邻居交换信息。该算法是“精确的”,即可以用固定的步长获得精确的共识最小化器,而大多数先前的方法必须使用递减的步长。当平滑部分具有Lipschitz梯度时,PG-EXTRA的遍历收敛速度为一阶最优残差。当平滑部分消失时,PG-EXTRA减少为P-EXTRA,这是一种没有梯度的算法(因此名称中没有“ G”),在标准(非遍历)意义上,其收敛速度略有提高。数值实验证明了PG-EXTRA的有效性,并验证了我们的收敛结果

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