School of Information and Communication Engineering, University of Electronic Science and Technology of China, Chengdu, 611731, China.
College of Computer and Data Science, Fuzhou University, Fuzhou, 350108, China.
Neural Netw. 2024 Nov;179:106562. doi: 10.1016/j.neunet.2024.106562. Epub 2024 Jul 22.
Multi-view learning is an emerging field of multi-modal fusion, which involves representing a single instance using multiple heterogeneous features to improve compatibility prediction. However, existing graph-based multi-view learning approaches are implemented on homogeneous assumptions and pairwise relationships, which may not adequately capture the complex interactions among real-world instances. In this paper, we design a compressed hypergraph neural network from the perspective of multi-view heterogeneous graph learning. This approach effectively captures rich multi-view heterogeneous semantic information, incorporating a hypergraph structure that simultaneously enables the exploration of higher-order correlations between samples in multi-view scenarios. Specifically, we introduce efficient hypergraph convolutional networks based on an explainable regularizer-centered optimization framework. Additionally, a low-rank approximation is adopted as hypergraphs to reformat the initial complex multi-view heterogeneous graph. Extensive experiments compared with several advanced node classification methods and multi-view classification methods have demonstrated the feasibility and effectiveness of the proposed method.
多视图学习是一种新兴的多模态融合领域,它涉及使用多种异构特征来表示单个实例,以提高兼容性预测。然而,现有的基于图的多视图学习方法是基于同构假设和成对关系实现的,这可能无法充分捕捉现实世界实例之间的复杂交互。在本文中,我们从多视图异构图学习的角度设计了一个压缩超图神经网络。这种方法有效地捕获了丰富的多视图异构语义信息,采用了超图结构,同时能够在多视图场景中探索样本之间的高阶相关性。具体来说,我们引入了基于可解释正则化中心优化框架的高效超图卷积网络。此外,采用低秩逼近作为超图,重新格式化初始复杂的多视图异构图。与几种先进的节点分类方法和多视图分类方法进行的广泛实验证明了所提出方法的可行性和有效性。