Literature DB >> 28316458

A Nonconvex Optimization Framework for Low Rank Matrix Estimation.

Tuo Zhao1, Zhaoran Wang2, Han Liu2.   

Abstract

We study the estimation of low rank matrices via nonconvex optimization. Compared with convex relaxation, nonconvex optimization exhibits superior empirical performance for large scale instances of low rank matrix estimation. However, the understanding of its theoretical guarantees are limited. In this paper, we define the notion of projected oracle divergence based on which we establish sufficient conditions for the success of nonconvex optimization. We illustrate the consequences of this general framework for matrix sensing. In particular, we prove that a broad class of nonconvex optimization algorithms, including alternating minimization and gradient-type methods, geometrically converge to the global optimum and exactly recover the true low rank matrices under standard conditions.

Entities:  

Year:  2015        PMID: 28316458      PMCID: PMC5354472     

Source DB:  PubMed          Journal:  Adv Neural Inf Process Syst        ISSN: 1049-5258


  1 in total

1.  NOISY MATRIX COMPLETION: UNDERSTANDING STATISTICAL GUARANTEES FOR CONVEX RELAXATION VIA NONCONVEX OPTIMIZATION.

Authors:  Yuxin Chen; Yuejie Chi; Jianqing Fan; Cong Ma; Yuling Yan
Journal:  SIAM J Optim       Date:  2020-10-28       Impact factor: 2.850

  1 in total

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