ADDITIVE SCHWARZ METHODS FOR CONVEX OPTIMIZATION AS GRADIENT METHODS

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This paper gives a unified convergence analysis of additive Schwarz methods for general convex optimization problems. Resembling the fact that additive Schwarz methods for linear problems are preconditioned Richardson methods, we prove that additive Schwarz methods for general convex optimization are in fact gradient methods. Then an abstract framework for convergence analysis of additive Schwarz methods is proposed. The proposed framework applied to linear elliptic problems agrees with the classical theory. We present applications of the proposed framework to various interesting convex optimization problems such as nonlinear elliptic problems, nonsmooth problems, and nonsharp problems.
Publisher
SIAM PUBLICATIONS
Issue Date
2020-05
Language
English
Article Type
Article
Citation

SIAM JOURNAL ON NUMERICAL ANALYSIS, v.58, no.3, pp.1495 - 1530

ISSN
0036-1429
DOI
10.1137/19M1300583
URI
http://hdl.handle.net/10203/282036
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