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首页> 外文期刊>SIAM Journal on Optimization: A Publication of the Society for Industrial and Applied Mathematics >STOCHASTIC PRIMAL-DUAL HYBRID GRADIENT ALGORITHM WITH ARBITRARY SAMPLING AND IMAGING APPLICATIONS
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STOCHASTIC PRIMAL-DUAL HYBRID GRADIENT ALGORITHM WITH ARBITRARY SAMPLING AND IMAGING APPLICATIONS

机译:具有任意采样和成像应用的随机原始 - 双混合梯度算法

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摘要

We propose a stochastic extension of the primal-dual hybrid gradient algorithm studied by Chambolle and Pock in 2011 to solve saddle point problems that are separable in the dual variable. The analysis is carried out for general convex-concave saddle point problems and problems that are either partially smooth / strongly convex or fully smooth / strongly convex. We perform the analysis for arbitrary samplings of dual variables, and we obtain known deterministic results as a special case. Several variants of our stochastic method significantly outperform the deterministic variant on a variety of imaging tasks.
机译:我们提出了2011年由Chambolle和Pock研究的原始双混合梯度算法的随机延伸,解决了双变量中可分离的马鞍点问题。 对一般凸凹鞍点问题进行分析及其部分光滑/强凸或完全光滑/强烈凸起的问题。 我们对双变量的任意样本进行分析,我们获得了已知的确定性结果作为特殊情况。 我们随机方法的几种变体显着优于各种成像任务的确定性变体。

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