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A partial proximal point algorithm for nuclear norm regularized matrix least squares problems
Authors:Kaifeng Jiang  Defeng Sun  Kim-Chuan Toh
Institution:1. Department of Mathematics, National University of Singapore, 10 Lower Kent Ridge Road, Singapore?, 119076, Singapore
2. Department of Mathematics and Risk Management Institute, National University of Singapore, 10 Lower Kent Ridge Road, Singapore?, 119076, Singapore
Abstract:We introduce a partial proximal point algorithm for solving nuclear norm regularized matrix least squares problems with equality and inequality constraints. The inner subproblems, reformulated as a system of semismooth equations, are solved by an inexact smoothing Newton method, which is proved to be quadratically convergent under a constraint non-degeneracy condition, together with the strong semi-smoothness property of the singular value thresholding operator. Numerical experiments on a variety of problems including those arising from low-rank approximations of transition matrices show that our algorithm is efficient and robust.
Keywords:
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