Spectral Embedding Fusion for Incomplete Multiview Clustering

Jie Chen;Yingke Chen;Zhu Wang;Haixian Zhang;Xi Peng
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Abstract

Incomplete multiview clustering (IMVC) aims to reveal the underlying structure of incomplete multiview data by partitioning data samples into clusters. Several graph-based methods exhibit a strong ability to explore high-order information among multiple views using low-rank tensor learning. However, spectral embedding fusion of multiple views is ignored in low-rank tensor learning. In addition, addressing missing instances or features is still an intractable problem for most existing IMVC methods. In this paper, we present a unified spectral embedding tensor learning (USETL) framework that integrates the spectral embedding fusion of multiple similarity graphs and spectral embedding tensor learning for IMVC. To remove redundant information from the original incomplete multiview data, spectral embedding fusion is performed by introducing spectral rotations at two different data levels, i.e., the spectral embedding feature level and the clustering indicator level. The aim of introducing spectral embedding tensor learning is to capture consistent and complementary information by seeking high-order correlations among multiple views. The strategy of removing missing instances is adopted to construct multiple similarity graphs for incomplete multiple views. Consequently, this strategy provides an intuitive and feasible way to construct multiple similarity graphs. Extensive experimental results on multiview datasets demonstrate the effectiveness of the two spectral embedding fusion methods within the USETL framework.
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不完整多视图聚类的光谱嵌入融合。
不完整多视图聚类(IMVC)旨在通过将数据样本划分为聚类来揭示不完整多视图数据的潜在结构。有几种基于图的方法显示出了利用低阶张量学习探索多视图间高阶信息的强大能力。然而,低阶张量学习忽略了多视图的光谱嵌入融合。此外,对于大多数现有的 IMVC 方法来说,解决实例或特征缺失仍然是一个难以解决的问题。在本文中,我们提出了一种统一的光谱嵌入张量学习(USETL)框架,它将多个相似性图的光谱嵌入融合和光谱嵌入张量学习整合在一起,用于 IMVC。为了去除原始不完整多视图数据中的冗余信息,光谱嵌入融合是通过在两个不同的数据级别(即光谱嵌入特征级别和聚类指标级别)引入光谱旋转来实现的。引入光谱嵌入张量学习的目的是通过寻求多个视图之间的高阶相关性来捕捉一致和互补的信息。采用剔除缺失实例的策略为不完整的多视图构建多个相似性图。因此,这种策略为构建多重相似性图提供了一种直观可行的方法。在多视图数据集上的大量实验结果证明了这两种光谱嵌入融合方法在 USETL 框架内的有效性。
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