Breaking the Expression Bottleneck of Graph Neural Networks

被引:7
|
作者
Yang, Mingqi [1 ]
Wang, Renjian [1 ]
Shen, Yanming [1 ]
Qi, Heng [1 ]
Yin, Baocai [1 ,2 ]
机构
[1] Dalian Univ Technol, Sch Comp Sci & Technol, Dalian 116024, Liaoning, Peoples R China
[2] Peng Cheng Lab, Shenzhen 518066, Guangdong, Peoples R China
基金
中国国家自然科学基金;
关键词
Task analysis; Graph neural networks; Convolution; Buildings; Systematics; Representation learning; Power measurement; Deep learning; graph representation learning; graph neural networks;
D O I
10.1109/TKDE.2022.3168070
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
the Weisfeiler-Lehman (WL) graph isomorphism test was used to measure the expressiveness of graph neural networks (GNNs), showing that the neighborhood aggregation GNNs were at most as powerful as 1-WL test in distinguishing graph structures. There were also improvements proposed in analogy to k-WL test (k > 1). However, the aggregations in these GNNs are far from injective as required by the WL test, and suffer from weak distinguishing strength, making it become the expression bottleneck. In this paper, we improve the expressiveness by exploring powerful aggregations. We reformulate an aggregation with the corresponding aggregation coefficient matrix, and then systematically analyze the requirements on this matrix for building more powerful and even injective aggregations. We also show the necessity of applying nonlinear units ahead of aggregations, which is different from most existing GNNs. Based on our theoretical analysis, we develop ExpandingConv. Experimental results show that our model significantly boosts performance, especially for large and densely connected graphs.
引用
收藏
页码:5652 / 5664
页数:13
相关论文
共 50 条
  • [41] Elastic Graph Neural Networks
    Liu, Xiaorui
    Jin, Wei
    Ma, Yao
    Li, Yaxin
    Liu, Hua
    Wang, Yiqi
    Yan, Ming
    Tang, Jiliang
    INTERNATIONAL CONFERENCE ON MACHINE LEARNING, VOL 139, 2021, 139
  • [42] GRAPH RECOGNITION BY NEURAL NETWORKS
    DREYFUS, G
    ZIPPELIUS, A
    NEURAL NETWORKS FROM MODELS TO APPLICATIONS, 1989, : 483 - 492
  • [43] STOCHASTIC GRAPH NEURAL NETWORKS
    Gao, Zhan
    Isufi, Elvin
    Ribeiro, Alejandro
    2020 IEEE INTERNATIONAL CONFERENCE ON ACOUSTICS, SPEECH, AND SIGNAL PROCESSING, 2020, : 9080 - 9084
  • [44] Introduction to Graph Neural Networks
    Liu Z.
    Zhou J.
    1600, Morgan and Claypool Publishers (14): : 1 - 127
  • [45] ConveXplainer for Graph Neural Networks
    Pereira, Tamara A.
    Nascimento, Erik Jhones F.
    Mesquita, Diego
    Souza, Amauri H.
    INTELLIGENT SYSTEMS, PT II, 2022, 13654 : 588 - 600
  • [46] Graph Neural Networks with Heterophily
    Zhu, Jiong
    Rossi, Ryan A.
    Rao, Anup
    Mai, Tung
    Lipka, Nedim
    Ahmed, Nesreen K.
    Koutra, Danai
    THIRTY-FIFTH AAAI CONFERENCE ON ARTIFICIAL INTELLIGENCE, THIRTY-THIRD CONFERENCE ON INNOVATIVE APPLICATIONS OF ARTIFICIAL INTELLIGENCE AND THE ELEVENTH SYMPOSIUM ON EDUCATIONAL ADVANCES IN ARTIFICIAL INTELLIGENCE, 2021, 35 : 11168 - 11176
  • [47] Binary Graph Neural Networks
    Bahri, Mehdi
    Bahl, Gaetan
    Zafeiriou, Stefanos
    2021 IEEE/CVF CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION, CVPR 2021, 2021, : 9487 - 9496
  • [48] Polarized Graph Neural Networks
    Fang, Zheng
    Xu, Lingjun
    Song, Guojie
    Long, Qingqing
    Zhang, Yingxue
    PROCEEDINGS OF THE ACM WEB CONFERENCE 2022 (WWW'22), 2022, : 1404 - 1413
  • [49] Convolutional Graph Neural Networks
    Gama, Fernando
    Marques, Antonio G.
    Leus, Geert
    Ribeiro, Alejandro
    CONFERENCE RECORD OF THE 2019 FIFTY-THIRD ASILOMAR CONFERENCE ON SIGNALS, SYSTEMS & COMPUTERS, 2019, : 452 - 456
  • [50] Streaming Graph Neural Networks
    Ma, Yao
    Guo, Ziyi
    Ren, Zhaochun
    Tang, Jiliang
    Yin, Dawei
    PROCEEDINGS OF THE 43RD INTERNATIONAL ACM SIGIR CONFERENCE ON RESEARCH AND DEVELOPMENT IN INFORMATION RETRIEVAL (SIGIR '20), 2020, : 719 - 728