SOTAVerified

Column _2,0-norm regularized factorization model of low-rank matrix recovery and its computation

2020-08-24Unverified0· sign in to hype

Ting Tao, Yitian Qian, Shaohua Pan

Unverified — Be the first to reproduce this paper.

Reproduce

Abstract

This paper is concerned with the column _2,0-regularized factorization model of low-rank matrix recovery problems and its computation. The column _2,0-norm of factor matrices is introduced to promote column sparsity of factors and low-rank solutions. For this nonconvex discontinuous optimization problem, we develop an alternating majorization-minimization (AMM) method with extrapolation, and a hybrid AMM in which a majorized alternating proximal method is proposed to seek an initial factor pair with less nonzero columns and the AMM with extrapolation is then employed to minimize of a smooth nonconvex loss. We provide the global convergence analysis for the proposed AMM methods and apply them to the matrix completion problem with non-uniform sampling schemes. Numerical experiments are conducted with synthetic and real data examples, and comparison results with the nuclear-norm regularized factorization model and the max-norm regularized convex model show that the column _2,0-regularized factorization model has an advantage in offering solutions of lower error and rank within less time.

Tasks

Reproductions