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Convergence rate of a distributed algorithm for matrix scaling to doubly stochastic form

机译:矩阵缩放到双随机形式的分布式算法的收敛速度

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Motivated by matrix scaling applications and, more recently, distributed averaging previous work has considered settings where the interconnections between components in a distributed system are captured by a strongly connected directed graph (digraph) and each component aims to assign assigning weights on its outgoing edges (based on the weights on its incoming edges) so that the corresponding set of weights forms a doubly stochastic matrix. In particular, it has been shown that the system components can obtain a set of weights that form a doubly stochastic matrix via a variety of distributed algorithms. In this paper, we establish that the convergence rate of one such distributed algorithm is linear with rate between zero and one.
机译:受矩阵缩放应用程序的启发,最近,分布式平均化以前的工作已经考虑了设置,其中分布式系统中组件之间的互连由强连接的有向图(digraph)捕获,并且每个组件旨在在其出站边缘分配分配权重( (基于其传入边缘上的权重),以便相应的权重集形成一个双重随机矩阵。特别地,已经显示出系统组件可以通过各种分布式算法获得形成双重随机矩阵的一组权重。在本文中,我们建立了一种这样的分布式算法的收敛速率是线性的,且速率在零和一之间。

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