An attention-based framework for multi-view clustering on Grassmann manifold

Danyang Wu, Xia Dong, Feiping Nie, Rong Wang, Xuelong Li

Research output: Contribution to journalArticlepeer-review

17 Scopus citations

Abstract

The key problem of multi-view clustering is to handle the inconsistency among multiple views. This article proposes an attention-based framework for multi-view clustering on Grassmann manifold (AMCGM). To be specific, the proposed AMCGM framework aims to learn a representative element on Grassmann manifold with the following four highlights: 1) AMCGM framework performs an attention-based weighted-learning scheme to capture the difference of views; 2) The clustering results can be directly generated by the structured graph learned via AMCGM, avoiding the randomness caused by traditional label-generation procedures, such as K-means clustering; 3) AMCGM has high extensibility since it can generate many multi-view clustering models on Grassmann manifold; 4) On Grassmann manifold, the relationship between the projection metric (PM)-based multi-view clustering model and squared projection metric (SPM)-based model is studied. Based on AMCGM framework, we propose some generated models and provide some useful conclusions. Moreover, to solve the optimization problems involved in the proposed AMCGM framework and generated models, we propose an efficiently iterative algorithm and provide rigorous convergence analysis. Extensive experimental results demonstrate the superb performance of our framework.

Original languageEnglish
Article number108610
JournalPattern Recognition
Volume128
DOIs
StatePublished - Aug 2022

Keywords

  • Attentive weighted-learning scheme
  • Grassmann manifold
  • Multi-view clustering
  • Principle angles

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