Nested Alternating Minimization with FISTA for Non-convex and Non-smooth Optimization Problems

被引:0
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作者
Eyal Gur
Shoham Sabach
Shimrit Shtern
机构
[1] Technion – Israel Institute of Technology,Faculty of Data and Decision Sciences
关键词
Non-convex and non-smooth optimization; Alternating minimization; Global convergence; Nested algorithms; FISTA; 90C06; 90C26; 90C30; 90C90;
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学科分类号
摘要
Motivated by a recent framework for proving global convergence to critical points of nested alternating minimization algorithms, which was proposed for the case of smooth subproblems, we first show here that non-smooth subproblems can also be handled within this framework. Specifically, we present a novel analysis of an optimization scheme that utilizes the FISTA method as a nested algorithm. We establish the global convergence of this nested scheme to critical points of non-convex and non-smooth optimization problems. In addition, we propose a hybrid framework that allows to implement FISTA when applicable, while still maintaining the global convergence result. The power of nested algorithms using FISTA in the non-convex and non-smooth setting is illustrated with some numerical experiments that show their superiority over existing methods.
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页码:1130 / 1157
页数:27
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