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Abstract:
Existing multi-view deep subspace clustering methods aim to learn a unified representation from multiview data, while the learned representation is difficult to maintain the underlying structure hidden in the origin samples, especially the high-order neighbor relationship between samples. To overcome the above challenges, this paper proposes a novel multi-order neighborhood fusion based multi-view deep subspace clustering model. We creatively integrate the multi-order proximity graph structures of different views into the self-expressive layer by a multi-order neighborhood fusion module. By this design, the multi-order Laplacian matrix supervises the learning of the view-consistent self-representation affinity matrix; then, we can obtain an optimal global affinity matrix where each connected node belongs to one cluster. In addition, the discriminative constraint between views is designed to further improve the clustering performance. A range of experiments on six public datasets demonstrates that the method performs better than other advanced multi-view clustering methods. The code is available at https://github.com/songzuolong/MNF-MDSC (accessed on 25 December 2024). Copyright © 2025 The Authors. Published by Tech Science Press.
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Computers, Materials and Continua
ISSN: 1546-2218
Year: 2025
Issue: 3
Volume: 82
Page: 3873-3890
3 . 1 0 0
JCR@2022
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ESI Highly Cited Papers on the List: 0 Unfold All
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30 Days PV: 6
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