Enhancing Clustering Performance With Tensorized High-Order Bipartite Graphs: A Structured Graph Learning Approach

Zihua Zhao, Zhe Cao, Haonan Xin, Rong Wang, Danyang Wu, Zhen Wang, Feiping Nie

Research output: Contribution to journalArticlepeer-review

Abstract

Clustering based on structured graph learning involves acquiring a proximity matrix with an explicit clustering structure from the original one. However, the original proximity matrix often lacks some must-links compared to the groundtruth, constraining the upper bound of clustering performance. High-order proximity information can mitigate this limitation, yet traditional high-order proximity matrix-based methods are time-intensive. To tackle this, we propose the Tensorized High-order Bipartite Graphs-based structured proximity matrix learning method (THBG). Firstly, we introduce a high-order bipartite graph proximity matrix with a swift computation method, incorporating high-order information and significantly reducing computational overhead. Secondly, we apply tensor nuclear norm minimization to the tensor composed of high-order bipartite graphs, learning a low-rank tensor representation that effectively harnesses the consistency of high-order information. Concurrently, a structured bipartite graph proximity matrix with an explicit clustering structure is adaptively learned based on the low-rank tensor representation and Laplace rank constraint. Experimental results demonstrate the superiority and great potential of this method.

Original languageEnglish
Pages (from-to)2616-2631
Number of pages16
JournalIEEE Transactions on Circuits and Systems for Video Technology
Volume35
Issue number3
DOIs
StatePublished - 2025

Keywords

  • Clustering
  • high-order bipartite graph
  • structured proximity matrix
  • tensor nuclear norm

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