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Graph-CAT: Graph Co-Attention Networks via local and global attribute augmentations

机译:Graph-Cat:通过本地和全局属性增强的图形共同关注网络

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摘要

Graph neural networks have achieved tremendous success in semi-supervised node classification. In this paper, we firstly analyse the propagation strategies in two milestone methods, Graph Convolu-tional Network (GCN) and Graph Attention Network (GAT), to reveal their underlying philosophies. According to our analysis, the propagations in GAT can be interpreted as learnable and asymmetric local attribute augmentations, while that of GCN can be interpreted as fixed and symmetric local attribute smoothing. Unfortunately, the local attribute augmentations in GAT is not adequate in certain circumstances, because the nodes tend to possess similar attributes in local neighbourhoods. With a toy experiment, we manage to demonstrate the necessity to incorporate global information. Therefore, we propose a novel Graph Co-ATtention Network (Graph-CAT), which performs both the local and global attribute augmentations based on two different yet complementary attention schemes. Extensive experiments in both the transductive and inductive tasks demonstrate the superiority of our Graph-CAT compared to the state-of-the-art methods.
机译:图形神经网络在半监督节点分类中取得了巨大成功。在本文中,我们首先分析了两个里程碑方法的传播策略,图卷曲网络(GCN)和图表关注网络(GAT),以揭示其底层哲学。根据我们的分析,GAT中的传播可以被解释为可学习和非对称的本地属性增强,而GCN的传播可以被解释为固定和对称的本地属性平滑。不幸的是,GAT中的本地属性增强在某些情况下不足,因为节点倾向于在当地社区中具有类似的属性。通过玩具实验,我们设法展示纳入全球信息的必要性。因此,我们提出了一种新颖的曲线图共关节网络(Graph-CAT),其基于两个不同但互补的注意方案来执行本地和全局属性增强。与最先进的方法相比,转换和归纳任务的广泛实验表明了我们的图形猫的优越性。

著录项

  • 来源
    《Future generation computer systems》 |2021年第5期|170-179|共10页
  • 作者单位

    School of Artificial Intelligence Hebei University of Technology Tianjin China Hebei Province Key Laboratory of Big Data Calculation Hebei University of Technology Tianjin China State Key Laboratory of Information Security Institute of Information Engineering Chinese Academy of Sciences Beijing China;

    School of Artificial Intelligence Hebei University of Technology Tianjin China Hebei Province Key Laboratory of Big Data Calculation Hebei University of Technology Tianjin China;

    SKLSDE School of Computer Science and Engineering Beihang University Beijing China;

    School of Artificial Intelligence Hebei University of Technology Tianjin China Hebei Province Key Laboratory of Big Data Calculation Hebei University of Technology Tianjin China;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Graph neural network; Attention mechanism; Attribute augmentation;

    机译:图形神经网络;注意机制;属性增强;
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