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A CLASS OF RANDOMIZED PRIMAL-DUAL ALGORITHMS FOR DISTRIBUTED OPTIMIZATION

机译:一类用于分布式优化的随机双对偶算法

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Based on a preconditioned version of the randomized block-coordinate forward-backward algorithm recently proposed in [23], several variants of block-coordinate primal-dual algorithms are designed in order to solve a wide array of monotone inclusion problems. These methods rely on a sweep of blocks of variables which are activated at each iteration according to a random rule, and they allow stochastic errors in the evaluation of the involved operators. Then, this framework is employed to derive block-coordinate primal-dual proximal algorithms for solving composite convex variational problems. The resulting algorithm implementations may be useful for reducing computational complexity and memory requirements. Furthermore, we show that the proposed approach can be used to develop novel asynchronous distributed primal-dual algorithms in a multi-agent context.
机译:基于最近在[23]中提出的随机块坐标向前-向后算法的预处理版本,设计了块坐标原始对偶算法的几种变体,以解决各种各样的单调包含问题。这些方法依赖于根据随机规则在每次迭代中激活的变量块的扫描,并且它们在评估所涉及的算子时允许随机误差。然后,利用该框架来导出用于解决复合凸变分问题的块坐标原对偶近端算法。所得的算法实现对于减少计算复杂性和存储器需求可能是有用的。此外,我们表明,所提出的方法可用于在多主体环境中开发新颖的异步分布式原始对偶算法。

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