Projective splitting with forward steps

被引:0
作者
Patrick R. Johnstone
Jonathan Eckstein
机构
[1] Rutgers University,Department of Management Sciences and Information Systems, Rutgers Business School
来源
Mathematical Programming | 2022年 / 191卷
关键词
49M27; 47H05; 47J25;
D O I
暂无
中图分类号
学科分类号
摘要
This work is concerned with the classical problem of finding a zero of a sum of maximal monotone operators. For the projective splitting framework recently proposed by Combettes and Eckstein, we show how to replace the fundamental subproblem calculation using a backward step with one based on two forward steps. The resulting algorithms have the same kind of coordination procedure and can be implemented in the same block-iterative and highly flexible manner, but may perform backward steps on some operators and forward steps on others. Prior algorithms in the projective splitting family have used only backward steps. Forward steps can be used for any Lipschitz-continuous operators provided the stepsize is bounded by the inverse of the Lipschitz constant. If the Lipschitz constant is unknown, a simple backtracking linesearch procedure may be used. For affine operators, the stepsize can be chosen adaptively without knowledge of the Lipschitz constant and without any additional forward steps. We close the paper by empirically studying the performance of several kinds of splitting algorithms on a large-scale rare feature selection problem.
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页码:631 / 670
页数:39
相关论文
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