Multi-view spectral clustering via partial sum minimisation of singular values

  • Ling Zhai
  • , Jihua Zhu
  • , Qinghai Zheng
  • , Shanmin Pang
  • , Zhongyu Li
  • , Jun Wang

Research output: Contribution to journalArticlepeer-review

15 Scopus citations

Abstract

This Letter proposes a robust multi-view spectral clustering approach. It first calculates a normalised graph Laplacian for each single view, and then uses them to recover a shared low-rank Laplacian by the low rank and sparse matrix decomposition. To achieve matrix decomposition, partial sum minimisation of singular values is leveraged to design a novel objective function, which can be optimised by the augmented Lagrangian multiplier algorithm to recover a common normalised graph Laplacian. Accordingly, multi-view clustering results can be obtained by taking spectral clustering on the common Laplacian. Experimental results illustrate its effectiveness over other related approaches.

Original languageEnglish
Pages (from-to)314-316
Number of pages3
JournalElectronics Letters
Volume55
Issue number6
DOIs
StatePublished - 21 Mar 2019

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