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Accelerated Distributed Optimization over Directed Graphs with Row and Column-Stochastic Matrices

机译:行和列随机矩阵在有向图上的加速分布式优化

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In this paper, we study distributed optimization problem over multi-agent networks where the goal is to find the global optimal of a sum of convex functions over strongly connected and directed graphs. A novel distributed algorithm is proposed where both row and column-stochastic matrices are utilized to bypass the limits of the implementation of doubly-stochastic matrices or eigenvector estimation in related work. Besides, it has an evident expression and accelerated convergence by introducing the momentum term. Combining the Generalized Small Gain Theorem with Linear Time Invariant (LTI) system inequality, the algorithm is proved to be able to linearly converge to the exact optimal solution. Furthermore, the ranges of stepsize and momentum paramater are characterized, respectively. Finally, simulation results illustrate effectiveness of the method and correctness of theoretical analysis.
机译:在本文中,我们研究了多智能体网络上的分布式优化问题,其目标是在强连通图和有向图上找到凸函数之和的全局最优。提出了一种新颖的分布式算法,在该算法中,行和列随机矩阵均被利用,以绕过相关工作中双随机矩阵或特征向量估计的实现限制。此外,通过引入动量项,它具有明显的表达并加速了收敛。将广义小增益定理与线性时不变(LTI)系统不等式相结合,证明该算法能够线性收敛到精确的最优解。此外,分别描述了步长和动量参数的范围。最后,仿真结果说明了该方法的有效性和理论分析的正确性。

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