Quantitative convergence analysis of iterated expansive, set-valued mappings

Journal Article (2018)
Author(s)

D. Russell Luke (University of Göttingen)

Hieu Thao Thao (TU Delft - Team Raf Van de Plas)

M.K. Tam (University of Göttingen)

Research Group
Team Raf Van de Plas
Copyright
© 2018 D. Russell Luke, Hieu Thao Nguyen, Matthew K. Tam
DOI related publication
https://doi.org/10.1287/moor.2017.0898
More Info
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Publication Year
2018
Language
English
Copyright
© 2018 D. Russell Luke, Hieu Thao Nguyen, Matthew K. Tam
Research Group
Team Raf Van de Plas
Issue number
4
Volume number
43
Pages (from-to)
1143-1176
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Abstract

We develop a framework for quantitative convergence analysis of Picard iterations of expansive set-valued fixed point mappings. There are two key components of the analysis. The first is a natural generalization of single-valued averaged mappings to expansive set-valued mappings that characterizes a type of strong calmness of the fixed point mapping. The second component to this analysis is an extension of the well-established notion of metric subregularity - or inverse calmness - of the mapping at fixed points. Convergence of expansive fixed point iterations is proved using these two properties, and quantitative estimates are a natural by-product of the framework. To demonstrate the application of the theory, we prove, for the first time, a number of results showing local linear convergence of nonconvex cyclic projections for inconsistent (and consistent) feasibility problems, local linear convergence of the forward-backward algorithm for structured optimization without convexity, strong or otherwise, and local linear convergence of the Douglas-Rachford algorithm for structured nonconvex minimization. This theory includes earlier approaches for known results, convex and nonconvex, as special cases.