Xin Like, Yang Wanqi, Wang Lei, Yang Ming
IEEE Trans Neural Netw Learn Syst. 2025 Jun;36(6):11443-11455. doi: 10.1109/TNNLS.2024.3479777.
This article focuses on unpaired multiview clustering (UMC), a challenging problem, where paired observed samples are unavailable across multiple views. The goal is to perform effective joint clustering using the unpaired observed samples in all views. In incomplete multiview clustering (IMC), existing methods typically rely on sample pairing between views to capture their complementary. However, this is not applicable in the case of UMC. Hence, we aim to extract the consistent cluster structure across views. In UMC, two challenging issues arise: the uncertain cluster structure due to the lack of labels and the uncertain pairing relationship due to the absence of paired samples. We assume that the view with a good cluster structure is the reliable view, which acts as a supervisor to guide the clustering of the other views. With the guidance of reliable views, a more certain cluster structure of these views is obtained while achieving alignment between the reliable views and the other views. Then, we propose reliable view guided UMC with one reliable view (RG-UMC) and reliable view guided UMC with multiple reliable views (RGs-UMC). Specifically, we design alignment modules with one reliable view and multiple reliable views, respectively, to adaptively guide the optimization process. Also, we utilize the compactness module to enhance the relationship of samples within the same cluster. Meanwhile, an orthogonal constraint is applied to the latent representation to obtain discriminate features. Extensive experiments show that both RG-UMC and RGs-UMC outperform the best state-of-the-art method by an average of 24.14% and 29.42% in normalized mutual information (NMI), respectively.
本文聚焦于非配对多视图聚类(UMC),这是一个具有挑战性的问题,即在多个视图中不存在配对的观测样本。目标是使用所有视图中的非配对观测样本进行有效的联合聚类。在不完全多视图聚类(IMC)中,现有方法通常依赖于视图之间的样本配对来捕捉它们的互补性。然而,这在UMC的情况下并不适用。因此,我们旨在提取跨视图的一致聚类结构。在UMC中,出现了两个具有挑战性的问题:由于缺乏标签导致聚类结构不确定,以及由于没有配对样本导致配对关系不确定。我们假设具有良好聚类结构的视图是可靠视图,它充当监督者来指导其他视图的聚类。在可靠视图的指导下,在实现可靠视图与其他视图对齐的同时,获得这些视图更确定的聚类结构。然后,我们提出了具有一个可靠视图的可靠视图引导UMC(RG - UMC)和具有多个可靠视图的可靠视图引导UMC(RGs - UMC)。具体来说,我们分别设计了具有一个可靠视图和多个可靠视图的对齐模块,以自适应地指导优化过程。此外,我们利用紧致性模块来增强同一聚类内样本的关系。同时,对潜在表示应用正交约束以获得判别特征。大量实验表明,RG - UMC和RGs - UMC在归一化互信息(NMI)方面分别比最佳的现有方法平均高出24.14%和29.42%。