A new model for sparse and low-rank matrix decomposition

  • Zisheng Liu
  • , Jicheng Li
  • , Guo Li
  • , Jianchao Bai
  • , Xuenian Liu

Research output: Contribution to journalArticlepeer-review

19 Scopus citations

Abstract

The robust principal component analysis (RPCA) model is a popular method for solving problems with the nuclear norm and ℓ1 norm. However, it is time-consuming since in general one has to use the singular value decomposition in each iteration. In this paper, we introduce a novel model to reformulate the existed model by making use of low-rank matrix factorization to surrogate the nuclear norm for the sparse and low-rank decomposition problem. In such case we apply the Penalty Function Method (PFM) and Augmented Lagrangian Multipliers Method (ALMM) to solve this new non-convex optimization problem. Theoretically, corresponding to our methods, the convergence analysis is given respectively. Compared with classical RPCA, some practical numerical examples are simulated to show that our methods are much better than RPCA.

Original languageEnglish
Pages (from-to)600-616
Number of pages17
JournalJournal of Applied Analysis and Computation
Volume7
Issue number2
DOIs
StatePublished - 2017

Keywords

  • Low-rank matrix
  • Matrix decomposition
  • Nuclear norm
  • Robust principal component analysis
  • Sparse matrix

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