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Mini-batch stochastic Nesterovs smoothing method for constrained convex stochastic composite optimization

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 نشر من قبل Ruyu Wang
 تاريخ النشر 2021
  مجال البحث
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This paper considers a class of constrained convex stochastic composite optimization problems whose objective function is given by the summation of a differentiable convex component, together with a nonsmooth but convex component. The nonsmooth component has an explicit max structure that may not easy to compute its proximal mapping. In order to solve these problems, we propose a mini-batch stochastic Nesterovs smoothing (MSNS) method. Convergence and the optimal iteration complexity of the method are established. Numerical results are provided to illustrate the efficiency of the proposed MSNS method for a support vector machine (SVM) model.



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