多视图聚类的分层表示:从样本内到视图内再到视图间

Jing-Hua Yang, Chuan Chen, Hongning Dai, Meng Ding, Lele Fu, Zibin Zheng
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引用次数: 1

摘要

多视图聚类(Multi-view clustering, MVC)旨在利用不同视图内的一致性特征,将样本划分到不同的聚类中。现有的基于子空间的MVC算法通常采用线性子空间结构和两阶段相似矩阵构建策略,存在低维子空间表示不精确和一致性探索不足的问题。本文通过集成样本内、视图内和视图间表示学习模型,提出了一种新的MVC分层表示方法。特别是,我们首先采用深度自编码器自适应地将原始高维数据映射到每个样本的潜在低维表示中。其次,我们利用潜在表征的自表达来探索每个视图样本之间的全局相似性,并获得子空间表征系数。第三,通过排列多个子空间表示矩阵构造三阶张量,并施加张量低秩约束,充分探索视图间的一致性。这三种模型被整合到一个统一的框架中,相互促进,达到满意的聚类效果。此外,还提出了乘法器交替方向法来解决具有挑战性的优化问题。在模拟和现实世界的多视图数据集上进行的大量实验表明,所提出的方法优于8个最先进的基线。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hierarchical Representation for Multi-view Clustering: From Intra-sample to Intra-view to Inter-view
Multi-view clustering (MVC) aims at exploiting the consistent features within different views to divide samples into different clusters. Existing subspace-based MVC algorithms usually assume linear subspace structures and two-stage similarity matrix construction strategies, thereby posing challenges in imprecise low-dimensional subspace representation and inadequacy of exploring consistency. This paper presents a novel hierarchical representation for MVC method via the integration of intra-sample, intra-view, and inter-view representation learning models. In particular, we first adopt the deep autoencoder to adaptively map the original high-dimensional data into the latent low-dimensional representation of each sample. Second, we use the self-expression of the latent representation to explore the global similarity between samples of each view and obtain the subspace representation coefficients. Third, we construct the third-order tensor by arranging multiple subspace representation matrices and impose the tensor low-rank constraint to sufficiently explore the consistency among views. Being incorporated into a unified framework, these three models boost each other to achieve a satisfactory clustering result. Moreover, an alternating direction method of multipliers algorithm is developed to solve the challenging optimization problem. Extensive experiments on both simulated and real-world multi-view datasets show the superiority of the proposed method over eight state-of-the-art baselines.
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