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arXiv:1710.04248 [math.OC]AbstractReferencesReviewsResources

Local Convergence of Proximal Splitting Methods for Rank Constrained Problems

Christian Grussler, Pontus Giselsson

Published 2017-10-11Version 1

We analyze the local convergence of proximal splitting algorithms to solve optimization problems that are convex besides a rank constraint. For this, we show conditions under which the proximal operator of a function involving the rank constraint is locally identical to the proximal operator of its convex envelope, hence implying local convergence. The conditions imply that the non-convex algorithms locally converge to a solution whenever a convex relaxation involving the convex envelope can be expected to solve the non-convex problem.

Comments: To be presented at the 56th IEEE Conference on Decision and Control, Melbourne, Dec 2017
Categories: math.OC, cs.LG, stat.ML
Subjects: 90C26, 90C30, 90C59, 90C06
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