SDGNN:保对称双流图神经网络

IF 15.3 1区 计算机科学 Q1 AUTOMATION & CONTROL SYSTEMS
Jiufang Chen;Ye Yuan;Xin Luo
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引用次数: 0

摘要

亲爱的编辑,这封信提出了一种保留对称性的双流图神经网络(SDGNN),用于无向加权图(UWG)的精确表征学习。虽然现有的图神经网络(GNN)是对 UWG 进行表征学习的重要工具,但它们总是采用唯一的节点特征矩阵来说明 UWG 的唯一节点集。这种建模策略会因特征空间的缩小而限制表征学习能力。为此,提出的 SDGNN 创新性地采用了以下两个方面的思路:1) 建立一个可容忍多节点特征矩阵的双流图学习框架,以提高表征学习能力;2) 在学习目标中集成一个对称正则化项,以暗示其多节点特征矩阵之间的相等约束,这体现了图的内在对称性,并促使联合学习多节点嵌入。在六个真实世界 UWG 数据集上的实验表明,与最先进的基线相比,所提出的 SDGNN 在处理缺失链接估计任务方面具有更优越的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SDGNN: Symmetry-Preserving Dual-Stream Graph Neural Networks
Dear Editor, This letter proposes a symmetry-preserving dual-stream graph neural network (SDGNN) for precise representation learning to an undirected weighted graph (UWG). Although existing graph neural networks (GNNs) are influential instruments for representation learning to a UWG, they invariably adopt a unique node feature matrix for illustrating the sole node set of a UWG. Such a modeling strategy can limit the representation learning ability due to the diminished feature space. To this end, the proposed SDGNN innovatively adopts the following two-fold ideas: 1) Building a dual-stream graph learning framework that tolerates multiple node feature matrices for boosting the representation learning ability; 2) Integrating a symmetry regularization term into the learning objective for implying the equality constraint among its multiple node feature matrices, which exemplifies a graph's intrinsic symmetry and prompts learning the multiple node embeddings jointly. Experiments on six real-world UWG datasets indicate that the proposed SDGNN has superior performance in addressing the task of missing link estimation compared with the state-of-the-art baselines.
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来源期刊
Ieee-Caa Journal of Automatica Sinica
Ieee-Caa Journal of Automatica Sinica Engineering-Control and Systems Engineering
CiteScore
23.50
自引率
11.00%
发文量
880
期刊介绍: The IEEE/CAA Journal of Automatica Sinica is a reputable journal that publishes high-quality papers in English on original theoretical/experimental research and development in the field of automation. The journal covers a wide range of topics including automatic control, artificial intelligence and intelligent control, systems theory and engineering, pattern recognition and intelligent systems, automation engineering and applications, information processing and information systems, network-based automation, robotics, sensing and measurement, and navigation, guidance, and control. Additionally, the journal is abstracted/indexed in several prominent databases including SCIE (Science Citation Index Expanded), EI (Engineering Index), Inspec, Scopus, SCImago, DBLP, CNKI (China National Knowledge Infrastructure), CSCD (Chinese Science Citation Database), and IEEE Xplore.
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