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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 BLOCK MIRROR DESCENT METHODS FOR NONSMOOTH AND STOCHASTIC OPTIMIZATION
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STOCHASTIC BLOCK MIRROR DESCENT METHODS FOR NONSMOOTH AND STOCHASTIC OPTIMIZATION

机译:非光滑和随机优化的随机块镜像下降法

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摘要

In this paper, we present a new stochastic algorithm, namely, the stochastic block mirror descent (SBMD) method for solving large-scale nonsmooth and stochastic optimization problems. The basic idea of this algorithm is to incorporate block coordinate decomposition and an incremental block averaging scheme into the classic (stochastic) mirror descent method, in order to significantly reduce the cost per iteration of the latter algorithm. We establish the rate of convergence of the SBMD method along with its associated large-deviation results for solving general nonsmooth and stochastic optimization problems. We also introduce variants of this method and establish their rate of convergence for solving strongly convex, smooth, and composite optimization problems, as well as certain nonconvex optimization problems. To the best of our knowledge, all these developments related to the SBMD methods are new in the stochastic optimization literature. Moreover, some of our results seem to be new for block coordinate descent methods for deterministic optimization.
机译:在本文中,我们提出了一种新的随机算法,即随机块镜像下降(SBMD)方法,用于解决大规模的非光滑和随机优化问题。该算法的基本思想是将块坐标分解和增量块平均方案合并到经典(随机)镜像下降方法中,以显着降低后一种算法的每次迭代成本。我们建立了SBMD方法的收敛速度及其相关的大偏差结果,以解决一般的非光滑和随机优化问题。我们还介绍了此方法的变体,并确定了它们的收敛速度,以解决强凸,平滑和复合优化问题以及某些非凸优化问题。据我们所知,与SBMD方法相关的所有这些开发都是随机优化文献中的新内容。此外,对于确定性优化的块坐标下降方法,我们的某些结果似乎是新的。

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