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Row-Stochastic Matrices Based Distributed Optimization Algorithm With Uncoordinated Step-Sizes

机译:基于行随机矩阵的步长不协调的分布式优化算法

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This paper investigates the distributed optimization problem over multi-agent networks, in which the target of agents is to collaboratively optimize the sum of all local objective functions. Each local objective function is uniquely known by a single agent. We concentrate on the scenario where communication among agents is portrayed as directed graphs. Based on the exact first order method, a fully distributed optimization algorithm is proposed to deal with the optimization problem. The proposed algorithm utilizes row-stochastic matrices and uncoordinated step-sizes, which exactly drives all agents to converge to the global optimization solution. Under the assumptions that the global objective function is strong convex and the local objective functions have Lipschitz continuous gradient, we show that the proposed algorithm linearly converges to the global optimization solution as long as the maximum step-size of agents does not exceed an explicitly characterized upper bound. Finally, numerical experiments are presented to demonstrate the correctness of theoretical analysis.
机译:本文研究了多智能体网络上的分布式优化问题,其中智能体的目标是协同优化所有局部目标函数之和。每个局部目标函数由单个代理唯一地知道。我们专注于将座席之间的通信描绘为有向图的场景。基于精确的一阶方法,提出了一种完全分布式的优化算法来解决该优化问题。所提出的算法利用行随机矩阵和不协调的步长,这恰好驱动所有代理收敛到全局优化解决方案。在全局目标函数为强凸且局部目标函数具有Lipschitz连续梯度的假设下,我们证明了只要代理的最大步长不超过明确表征的特征,该算法就可以线性收敛至全局优化解。上限。最后,通过数值实验证明了理论分析的正确性。

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