Robust Inexact Alternating Optimization for Matrix Completion with Outliers

Authors

  • Ji Li Beijing Computational Science Research Center, Beijing 100193, China
  • Jian-Feng Cai Department of Mathematics, Hong Kong University of Science and Technology, Clear Water Bay, Kowloon, Hong Kong
  • Hongkai Zhao Department of Mathematics, University of California, Irvine, CA, USA

DOI:

https://doi.org/10.4208/jcm.1809-m2018-0106

Keywords:

Matrix completion, ADMM, Outlier noise, Inexact projection.

Abstract

We investigate the problem of robust matrix completion with a fraction of observation corrupted by sparsity outlier noise. We propose an algorithmic framework based on the ADMM algorithm for a non-convex optimization, whose objective function consists of an $\ell_1$ norm data fidelity and a rank constraint. To reduce the computational cost per iteration, two inexact schemes are developed to replace the most time-consuming step in the generic ADMM algorithm. The resulting algorithms remarkably outperform the existing solvers for robust matrix completion with outlier noise. When the noise is severe and the underlying matrix is ill-conditioned, the proposed algorithms are faster and give more accurate solutions than state-of-the-art robust matrix completion approaches.

Published

2020-02-20

Issue

Section

Articles