Tensorized Incomplete Multi-View Clustering with Intrinsic Graph Completion

Shuping Zhao, Jie Wen, Lunke Fei, Bob Zhang
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Abstract

Most of the existing incomplete multi-view clustering (IMVC) methods focus on attaining a consensus representation from different views but ignore the important information hidden in the missing views and the latent intrinsic structures in each view. To tackle these issues, in this paper, a unified and novel framework, named tensorized incomplete multi-view clustering with intrinsic graph completion (TIMVC_IGC) is proposed. Firstly, owing to the effectiveness of the low-rank representation in revealing the inherent structure of the data, we exploit it to infer the missing instances and construct the complete graph for each view. Afterwards, inspired by the structural consistency, a between-view consistency constraint is imposed to guarantee the similarity of the graphs from different views. More importantly, the TIMVC_IGC simultaneously learns the low-rank structures of the different views and explores the correlations of the different graphs in a latent manifold sub-space using a low-rank tensor constraint, such that the intrinsic graphs of the different views can be obtained. Finally, a consensus representation for each sample is gained with a co-regularization term for final clustering. Experimental results on several real-world databases illustrates that the proposed method can outperform the other state-of-the-art related methods for incomplete multi-view clustering.
具有内在图补全的张紧化不完全多视图聚类
现有的不完全多视图聚类(IMVC)方法大多侧重于从不同的视图中获得一致的表示,而忽略了隐藏在缺失视图中的重要信息和每个视图中潜在的内在结构。为了解决这些问题,本文提出了一个统一的、新颖的框架,即具有内在图补全的张张化不完全多视图聚类(TIMVC_IGC)。首先,由于低秩表示在揭示数据固有结构方面的有效性,我们利用它来推断缺失实例并为每个视图构建完整图。然后,受结构一致性的启发,施加视图间一致性约束以保证不同视图图的相似性。更重要的是,TIMVC_IGC同时学习不同视图的低秩结构,并利用低秩张量约束在潜在流形子空间中探索不同图的相关性,从而获得不同视图的内在图。最后,用协正则化项获得每个样本的一致表示,用于最终聚类。在多个真实数据库上的实验结果表明,该方法在不完全多视图聚类方面优于其他相关方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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