首页> 外文期刊>SIAM Journal on Optimization: A Publication of the Society for Industrial and Applied Mathematics >SMOOTHING PROJECTED GRADIENT METHOD AND ITS APPLICATION TO STOCHASTIC LINEAR COMPLEMENTARITY PROBLEMS
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SMOOTHING PROJECTED GRADIENT METHOD AND ITS APPLICATION TO STOCHASTIC LINEAR COMPLEMENTARITY PROBLEMS

机译:光滑投影梯度法及其在随机线性互补问题中的应用

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摘要

A smoothing projected gradient (SPG) method is proposed for the minimization problem on a closed convex set, where the objective function is locally Lipschitz continuous but nonconvex, nondifferentiable. We show that any accumulation point generated by the SPG method is a stationary point associated with the smoothing function used in the method, which is a Clarke stationary point in many applications. We apply the SPG method to the stochastic linear complementarity problem (SLCP) and image restoration problems. We study the stationary point defined by the directional derivative and provide necessary and sufficient conditions for a local minimizer of the expected residual minimization (ERM) formulation of SLCP. Preliminary numerical experiments using the SPG method for solving randomly generated SLCP and image restoration problems of large sizes show that the SPG method is promising.
机译:针对目标凸函数是局部Lipschitz连续但非凸,不可微的封闭凸集上的最小化问题,提出了一种平滑投影梯度(SPG)方法。我们表明,由SPG方法生成的任何累积点都是与该方法中使用的平滑函数相关联的固定点,在许多应用中这是Clarke固定点。我们将SPG方法应用于随机线性互补问题(SLCP)和图像恢复问题。我们研究了由方向导数定义的平稳点,并为SLCP的预期残余最小化(ERM)公式的局部最小化提供了必要和充分的条件。使用SPG方法解决随机生成的SLCP的初步数值实验以及大尺寸图像恢复问题表明,SPG方法很有希望。

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