Multi-view deep subspace clustering via level-by-level guided multi-level features learning

IF 3.4 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Applied Intelligence Pub Date : 2024-09-06 DOI:10.1007/s10489-024-05807-1
Kaiqiang Xu, Kewei Tang, Zhixun Su
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Abstract

Multi-view subspace clustering has attracted extensive attention due to its ability to efficiently handle data from diverse sources. In recent years, plentiful multi-view subspace clustering methods have emerged and achieved satisfactory clustering performance. However, these methods rarely consider simultaneously handling data with a nonlinear structure and exploiting the structural and multi-level information inherent in the data. To remedy these shortcomings, we propose the novel multi-view deep subspace clustering via level-by-level guided multi-level features learning (MDSC-LGMFL). Specifically, an autoencoder is used for each view to extract the view-specific multi-level features, and multiple self-representation layers are introduced into the autoencoder to learn the subspace representations corresponding to the multi-level features. These self-representation layers not only provide multiple information flow paths through the autoencoder but also enforce multiple encoder layers to produce the multi-level features that satisfy the linear subspace assumption. With the novel level-by-level guidance strategy, the last-level feature is guaranteed to encode the structural information from the view and the previous-level features. Naturally, the subspace representation of the last-level feature can more reliably reflect the data affinity relationship and thus can be viewed as the new, better representation of the view. Furthermore, to guarantee the structural consistency among different views, instead of simply learning the common subspace structure by enforcing it to be close to different view-specific new, better representations, we conduct self-representation on these new, better representations to learn the common subspace structure, which can be applied to the spectral clustering algorithm to achieve the final clustering results. Numerous experiments on six widely used benchmark datasets show the superiority of the proposed method.

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通过逐级引导的多级特征学习进行多视角深度子空间聚类
多视角子空间聚类因其能有效处理来自不同来源的数据而受到广泛关注。近年来,出现了大量多视角子空间聚类方法,并取得了令人满意的聚类性能。然而,这些方法很少考虑同时处理非线性结构的数据和利用数据固有的结构和多层次信息。为了弥补这些不足,我们提出了通过逐级引导多级特征学习(MDSC-LGMFL)的新型多视角深度子空间聚类方法。具体来说,每个视图使用一个自动编码器来提取特定视图的多层次特征,并在自动编码器中引入多个自表示层来学习与多层次特征相对应的子空间表示。这些自表示层不仅为自动编码器提供了多条信息流路径,还强制多个编码器层生成满足线性子空间假设的多级特征。有了新颖的逐层引导策略,最后一层特征就能保证编码来自视图和前一层特征的结构信息。自然,最后一级特征的子空间表示能更可靠地反映数据的亲和关系,因此可以被视为视图的新的、更好的表示。此外,为了保证不同视图之间的结构一致性,我们并不是简单地通过强制要求其接近不同视图的新的、更好的表征来学习共同的子空间结构,而是对这些新的、更好的表征进行自表征来学习共同的子空间结构,并将其应用到光谱聚类算法中,从而实现最终的聚类结果。在六个广泛使用的基准数据集上进行的大量实验表明了所提方法的优越性。
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来源期刊
Applied Intelligence
Applied Intelligence 工程技术-计算机:人工智能
CiteScore
6.60
自引率
20.80%
发文量
1361
审稿时长
5.9 months
期刊介绍: With a focus on research in artificial intelligence and neural networks, this journal addresses issues involving solutions of real-life manufacturing, defense, management, government and industrial problems which are too complex to be solved through conventional approaches and require the simulation of intelligent thought processes, heuristics, applications of knowledge, and distributed and parallel processing. The integration of these multiple approaches in solving complex problems is of particular importance. The journal presents new and original research and technological developments, addressing real and complex issues applicable to difficult problems. It provides a medium for exchanging scientific research and technological achievements accomplished by the international community.
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