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PANDA: A Dual Linearly Converging Method for Distributed Optimization Over Time-Varying Undirected Graphs

机译:PANDA:随时间变化的无向图的分布式优化的双重线性收敛方法

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In this paper we consider a distributed convex optimization problem over time-varying networks. We propose a dual method that converges R-linearly to the optimal point given that the agents' objective functions are strongly convex and have Lipschitz continuous gradients. The proposed method requires half the amount of variable exchanges per iteration than methods based on DIGing, and yields improved practical performance as empirically demonstrated.
机译:在本文中,我们考虑了时变网络上的分布式凸优化问题。考虑到代理的目标函数是强凸且具有Lipschitz连续梯度的情况,我们提出了一种将R线性收敛到最佳点的对偶方法。所提出的方法与基于DIGing的方法相比,每次迭代所需的变量交换量减少了一半,并且如实证所示,可以提高实际性能。

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