An Optimal Subgradient Algorithm with Subspace Search for Costly Convex Optimization Problems

被引:0
|
作者
Masoud Ahookhosh
Arnold Neumaier
机构
[1] University of Vienna,Faculty of Mathematics
来源
Bulletin of the Iranian Mathematical Society | 2019年 / 45卷
关键词
Convex optimization; Nonsmooth optimization; Subgradient methods; Multidimensional subspace search; Optimal complexity; First-order black-box information; Costly linear operator; 90C25; 90C60; 49M37; 65K05; 68Q25;
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摘要
This paper presents an acceleration of the optimal subgradient algorithm OSGA (Neumaier in Math Program 158(1–2):1–21, 2016) for solving structured convex optimization problems, where the objective function involves costly affine and cheap nonlinear terms. We combine OSGA with a multidimensional subspace search technique, which leads to a low-dimensional auxiliary problem that can be solved efficiently. Numerical results concerning some applications are reported. A software package implementing the new method is available.
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页码:883 / 910
页数:27
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