AN UNBIASED APPROACH TO LOW RANK RECOVERY
Journal article, 2022

Low rank recovery problems have been a subject of intense study in recent years. While the rank function is useful for regularization it is difficult to optimize due to its nonconvexity and discontinuity. The standard remedy for this is to exchange the rank function for the convex nuclear norm, which is known to favor low rank solutions under certain conditions. On the downside the nuclear norm exhibits a shrinking bias that can severely distort the solution in the presence of noise, which motivates the use of stronger nonconvex alternatives. In this paper we study two such formulations. We characterize the critical points and give sufficient conditions for a low rank stationary point to be unique. Moreover, we derive conditions that ensure global optimality of the low rank stationary point and show that these hold under moderate noise levels.

low rank completion

nonconvex optimization

quadratic envelope regularization

Author

Marcus Carlsson

Lund University

Daniele Gerosa

Lund University

Carl Olsson

Chalmers, Electrical Engineering, Signal Processing and Biomedical Engineering

SIAM Journal on Optimization

1052-6234 (ISSN) 1095-7189 (eISSN)

Vol. 32 4 2969-2996

Subject Categories

Other Electrical Engineering, Electronic Engineering, Information Engineering

DOI

10.1137/19M1294800

More information

Latest update

1/26/2023