Max-Mahalanobis Anchors Guidance for Multi-View Clustering

Authors

  • Pei Zhang National University of Defense Technology Centre for Frontier AI Research, Agency for Science, Technology and Research Institute of High Performance Computing, Agency for Science, Technology and Research
  • Yuangang Pan Centre for Frontier AI Research, Agency for Science, Technology and Research Institute of High Performance Computing, Agency for Science, Technology and Research
  • Siwei Wang Intelligent Game and Decision Lab
  • Shengju Yu National University of Defense Technology
  • Huiying Xu Zhejiang Normal University
  • En Zhu National University of Defense Technology
  • Xinwang Liu National University of Defense Technology
  • Ivor Tsang Centre for Frontier AI Research, Agency for Science, Technology and Research Institute of High Performance Computing, Agency for Science, Technology and Research

DOI:

https://doi.org/10.1609/aaai.v39i21.34406

Abstract

Anchor selection or learning has become a critical component in large-scale multi-view clustering. Existing anchor-based methods, which either select-then-fix or initialize-then-optimize with orthogonality, yield promising performance. However, these methods still suffer from instability of initialization or insufficient depiction of data distribution. Moreover, the desired properties of anchors in multi-view clustering remain unspecified. To address these issues, this paper first formalizes the desired characteristics of anchors, namely Diversity, Balance and Compactness. We then devise and mathematically validate anchors that satisfy these properties by maximizing the Mahalanobis distance between anchors. Furthermore, we introduce a novel method called Max-Mahalanobis Anchors Guidance for multi-view Clustering (MAGIC), which guides the cross-view representations to progressively align with our well-defined anchors. This process yields highly discriminative and compact representations, significantly enhancing the performance of multi-view clustering. Experimental results show that our meticulously designed strategy significantly outperforms existing anchor-based methods in enhancing anchor efficacy, leading to substantial improvement in multi-view clustering performance.

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Published

2025-04-11

How to Cite

Zhang, P., Pan, Y., Wang, S., Yu, S., Xu, H., Zhu, E., … Tsang, I. (2025). Max-Mahalanobis Anchors Guidance for Multi-View Clustering. Proceedings of the AAAI Conference on Artificial Intelligence, 39(21), 22488–22496. https://doi.org/10.1609/aaai.v39i21.34406

Issue

Section

AAAI Technical Track on Machine Learning VII