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Performing linear convergence for distributed constrained optimisation over time-varying directed unbalanced networks

机译:在时变有向不平衡网络上执行分布式约束优化的线性收敛

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The problem of distributed constrained optimisation over a network of agents, where the goal is to cooperatively minimise the sum of all local convex objective functions is studied. Each agent in the network possesses only its private local convex objective function and is constrained to a coupling equality constraint and its local inequality constraint. Moreover, the authors particularly focus on the scenario where each agent is only allowed to interact with their in-neighbours over a series of time-varying directed unbalanced networks. To collectively address the optimisation problem, a novel distributed primal-dual push-DIGing (integrated push-sum strategy with distributed inexact gradient tracking method) algorithm (termed as DPD-PD) in which agents employ uncoordinated step-sizes is proposed. Unlike other methods, DPD-PD allows not only the mixing matrices are column-stochastic, but also the step-sizes are uncoordinated. An important feature of DPD-PD is handling distributed constrained optimisation problems in the case of time-varying directed unbalanced networks. When objective functions are strongly convex and smooth, the authors demonstrate that DPD-PD converges linearly to the optimal solution given that the uncoordinated step-sizes are smaller than an upper bound. Explicit convergence rate is also conducted. Preliminary results on some numerical experiments validate the theoretical findings.
机译:研究了以代理网络为目标的协作最小化所有局部凸目标函数之和的分布式约束优化问题。网络中的每个主体仅拥有其私有的局部凸目标函数,并且受到耦合等式约束和其局部不等式约束的约束。此外,作者特别关注仅允许每个代理通过一系列时变定向的不平衡网络与其邻居进行交互的情况。为了共同解决优化问题,提出了一种新的分布式主体对偶推送DIGing(集成有分布式不精确梯度跟踪方法的推送和策略)(称为DPD-PD)算法,其中代理采用不协调的步长。与其他方法不同,DPD-PD不仅允许混合矩阵是列随机的,而且还允许步长不协调。 DPD-PD的重要特征是在时变有向不平衡网络的情况下处理分布式约束优化问题。当目标函数强烈凸且光滑时,作者证明,如果未协调的步长小于上限,则DPD-PD线性收敛至最优解。还进行了显式收敛速度。一些数值实验的初步结果验证了理论发现。

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