FORWARD-BACKWARD SPLITTING WITH DEVIATIONS FOR MONOTONE INCLUSIONS

被引:0
|
作者
Sadeghi H. [1 ]
Banert S. [1 ]
Giselsson P. [1 ]
机构
[1] Department of Automatic Control, Lund University, Lund
来源
关键词
Forward-backward splitting; Global convergence; Inertial primal-dual algorithm; Linear convergence rate; Monotone inclusions;
D O I
10.23952/asvao.6.2024.2.01
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学科分类号
摘要
We propose and study a weakly convergent variant of the forward-backward algorithm for solving structured monotone inclusion problems. Our algorithm features a per-iteration deviation vector, providing additional degrees of freedom. The only requirement on the deviation vector to guarantee convergence is that its norm is bounded by a quantity that can be computed online. This approach offers great flexibility and paves the way for the design of new forward-backward-based algorithms, while still retaining global convergence guarantees. These guarantees include linear convergence under a metric subregularity assumption. Choosing suitable monotone operators enables the incorporation of deviations into other algorithms, such as the Chambolle-Pock method and Krasnosel'skii-Mann iterations. We propose a novel inertial primal-dual algorithm by selecting the deviations along a momentum direction and deciding their size by using the norm condition. Numerical experiments validate our convergence claims and demonstrate that even this simple choice of a deviation vector can enhance the performance compared to, for instance, the standard Chambolle-Pock algorithm. Copy: 2024 Applied Set-Valued Analysis and Optimization. © 2024 Biemdas Academic Publishers. All rights reserved.
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页码:113 / 135
页数:22
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