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Stochastic quasi-Fejer block-coordinate fixed point iterations with random sweeping II: mean-square and linear convergence

机译:随机扫描的随机拟船块 - 坐标固定点迭代,随机扫描II:均衡和线性收敛

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摘要

Combettes and Pesquet (SIAM J Optim 25:1221-1248,2015) investigated the almost sure weak convergence of block-coordinate fixed point algorithms and discussed their applications to nonlinear analysis and optimization. This algorithmic framework features random sweeping rules to select arbitrarily the blocks of variables that are activated over the course of the iterations and it allows for stochastic errors in the evaluation of the operators. The present paper establishes results on the mean-square and linear convergence of the iterates. Applications to monotone operator splitting and proximal optimization algorithms are presented.
机译:Combettes和Pesquet(Siam J Optim 25:1221-1248,2015)研究了块坐标固定点算法的几乎肯定弱融合,并讨论了它们在非线性分析和优化的应用。 该算法框架具有随机的扫描规则,以任意选择在迭代过程中激活的变量块,并且它允许在运算符的评估中进行随机错误。 本文建立了迭代的平均方形和线性融合的结果。 介绍了单调运算符分离和近端优化算法的应用。

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