Hybrid limited memory gradient projection methods for box-constrained optimization problems

被引:0
|
作者
Serena Crisci
Federica Porta
Valeria Ruggiero
Luca Zanni
机构
[1] University of Campania “L. Vanvitelli”,Department of Mathematics and Physics
[2] University of Modena and Reggio Emilia,Department of Physics, Informatics and Mathematics
[3] University of Ferrara,Department of Mathematics and Computer Science
[4] Member of the INdAM-GNCS Research group,undefined
关键词
Box-constrained optimization; Gradient projection methods; Steplength selection rule; Ritz-like values; 65K05; 90C30; 49M37;
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学科分类号
摘要
Gradient projection methods represent effective tools for solving large-scale constrained optimization problems thanks to their simple implementation and low computational cost per iteration. Despite these good properties, a slow convergence rate can affect gradient projection schemes, especially when high accurate solutions are needed. A strategy to mitigate this drawback consists in properly selecting the values for the steplength along the negative gradient. In this paper, we consider the class of gradient projection methods with line search along the projected arc for box-constrained minimization problems and we analyse different strategies to define the steplength. It is well known in the literature that steplength selection rules able to approximate, at each iteration, the eigenvalues of the inverse of a suitable submatrix of the Hessian of the objective function can improve the performance of gradient projection methods. In this perspective, we propose an automatic hybrid steplength selection technique that employs a proper alternation of standard Barzilai–Borwein rules, when the final active set is not well approximated, and a generalized limited memory strategy based on the Ritz-like values of the Hessian matrix restricted to the inactive constraints, when the final active set is reached. Numerical experiments on quadratic and non-quadratic test problems show the effectiveness of the proposed steplength scheme.
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页码:151 / 189
页数:38
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