Mathematics (May 2025)

Tensor-Based Uncoupled and Incomplete Multi-View Clustering

  • Yapeng Liu,
  • Wei Guo,
  • Weiyu Li,
  • Jingfeng Su,
  • Qianlong Zhou,
  • Shanshan Yu

DOI
https://doi.org/10.3390/math13091516
Journal volume & issue
Vol. 13, no. 9
p. 1516

Abstract

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Multi-view clustering demonstrates strong performance in various real-world applications. However, real-world data often contain incomplete and uncoupled views. Missing views can lead to the loss of latent information, and uncoupled views create obstacles for cross-view learning. Existing methods rarely consider incomplete and uncoupled multi-view data simultaneously. To address these problems, a novel method called Tensor-based Uncoupled and Incomplete Multi-view Clustering (TUIMC) is proposed to effectively handle incomplete and uncoupled data. Specifically, the proposed method recovers missing samples in a low-dimensional feature space. Subsequently, the self-representation matrices are paired with the optimal views through permutation matrices. The coupled self-representation matrices are integrated into a third-order tensor to explore high-order information of multi-view data. An efficient algorithm is designed to solve the proposed model. Experimental results on five widely used benchmark datasets show that the proposed method exhibits superior clustering performance on incomplete and uncoupled multi-view data.

Keywords