Please use this identifier to cite or link to this item: http://hdl.handle.net/10397/98569
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Title: An exact penalty method for semidefinite-box-constrained low-rank matrix optimization problems
Authors: Liu, T 
Lu, Z
Chen, X 
Dai, YH
Issue Date: Jan-2020
Source: IMA journal of numerical analysis, Jan. 2020, v. 40, no. 1, p. 563-586
Abstract: This paper considers a matrix optimization problem where the objective function is continuously differentiable and the constraints involve a semidefinite-box constraint and a rank constraint. We first replace the rank constraint by adding a non-Lipschitz penalty function in the objective and prove that this penalty problem is exact with respect to the original problem. Next, for the penalty problem we present a nonmonotone proximal gradient (NPG) algorithm whose subproblem can be solved by Newton’s method with globally quadratic convergence. We also prove the convergence of the NPG algorithm to a first-order stationary point of the penalty problem. Furthermore, based on the NPG algorithm, we propose an adaptive penalty method (APM) for solving the original problem. Finally, the efficiency of an APM is shown via numerical experiments for the sensor network localization problem and the nearest low-rank correlation matrix problem.
Keywords: Rank constrained optimization
Non-Lipschitz penalty
Nonmonotone proximal gradient
Penalty method
Publisher: Oxford University Press
Journal: IMA journal of numerical analysis 
ISSN: 0272-4979
EISSN: 1464-3642
DOI: 10.1093/imanum/dry069
Rights: © The Author(s) 2018. Published by Oxford University Press on behalf of the Institute of Mathematics and its Applications. All rights reserved.
This is a pre-copyedited, author-produced version of an article accepted for publication in IMA Journal of Numerical Analysis following peer review. The version of record Tianxiang Liu, Zhaosong Lu, Xiaojun Chen, Yu-Hong Dai, An exact penalty method for semidefinite-box-constrained low-rank matrix optimization problems, IMA Journal of Numerical Analysis, Volume 40, Issue 1, January 2020, Pages 563–586 is available online at: https://doi.org/10.1093/imanum/dry069.
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