Prox-Regularity of Rank Constraint Sets and Implications for Algorithms

2013 | journal article. A publication with affiliation to the University of Göttingen.

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​Prox-Regularity of Rank Constraint Sets and Implications for Algorithms​
Luke, R. ​ (2013) 
Journal of Mathematical Imaging and Vision47(3) pp. 231​-238​.​ DOI: https://doi.org/10.1007/s10851-012-0406-3 

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Authors
Luke, Russell 
Abstract
We present an analysis of sets of matrices with rank less than or equal to a specified number s. We provide a simple formula for the normal cone to such sets, and use this to show that these sets are prox-regular at all points with rank exactly equal to s. The normal cone formula appears to be new. This allows for easy application of prior results guaranteeing local linear convergence of the fundamental alternating projection algorithm between sets, one of which is a rank constraint set. We apply this to show local linear convergence of another fundamental algorithm, approximate steepest descent. Our results apply not only to linear systems with rank constraints, as has been treated extensively in the literature, but also nonconvex systems with rank constraints.
Issue Date
2013
Journal
Journal of Mathematical Imaging and Vision 
Organization
Fakultät für Mathematik und Informatik
ISSN
0924-9907
Language
English

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