An indefinite proximal subgradient-based algorithm for nonsmooth composite optimization

JOURNAL OF GLOBAL OPTIMIZATION(2022)

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摘要
We propose an indefinite proximal subgradient-based algorithm (IPSB) for solving nonsmooth composite optimization problems. IPSB is a generalization of the Nesterov’s dual algorithm, where an indefinite proximal term is added to the subproblems, which can make the subproblem easier and the algorithm efficient when an appropriate proximal operator is judiciously setting down. Under mild assumptions, we establish sublinear convergence of IPSB to a region of the optimal value. We also report some numerical results, demonstrating the efficiency of IPSB in comparing with the classical dual averaging-type algorithms.
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关键词
Nonsmooth optimization, Composite convex optimization, Nesterov's dual averaging, Subgradient
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