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Fenchel dual gradient methods for distributed convex optimization over time-varying networks

机译:时变网络上分布凸优化的Fenchel对偶梯度法

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To date, a large collection of distributed algorithms for convex multi-agent optimization have been reported, yet only few of them converge to an optimal solution at guaranteed rates when the topologies of the agent networks are time-varying. Motivated by this, we develop a family of distributed Fenchel dual gradient methods for solving strongly convex yet non-smooth multi-agent optimization problems with nonidentical local constraints over time-varying networks. The proposed algorithms are constructed based on the application of weighted gradient methods to the Fenchel dual of the multiagent optimization problem. They are able to drive all the agents to dual optimality at an O(1/k) rate and to primal optimality at an O(1/√k) rate under a standard network connectivity condition. The competent convergence performance of the Fenchel dual gradient methods is demonstrated via numerical examples.
机译:迄今为止,已经报道了用于凸型多智能体优化的大量分布式算法,但是当智能体网络的拓扑随时间变化时,只有少数算法以保证的速率收敛到最优解决方案。因此,我们开发了一系列分布式Fenchel对偶梯度方法,用于解决时变网络上具有不相同局部约束的强凸但不平滑的多主体优化问题。该算法是基于加权梯度法在多智能体优化问题的Fenchel对偶上的应用而构造的。在标准的网络连接条件下,它们能够驱动所有代理以O(1 / k)速率达到双重最优,并以O(1 /√k)速率达到原始最优。通过数值实例证明了Fenchel对偶梯度法的有效收敛性能。

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