Polarized Graph Neural Networks

被引:11
|
作者
Fang, Zheng [1 ]
Xu, Lingjun [1 ]
Song, Guojie [1 ]
Long, Qingqing [2 ]
Zhang, Yingxue [3 ]
机构
[1] Peking Univ, Sch AI, Key Lab Machine Percept MoE, Beijing, Peoples R China
[2] Peking Univ, Beijing, Peoples R China
[3] Huawei Noahs Ark Lab, Montreal, PQ, Canada
基金
中国国家自然科学基金;
关键词
Graph Neural Networks; Heterophily; Attitude Polarization;
D O I
10.1145/3485447.3512187
中图分类号
TP3 [计算技术、计算机技术];
学科分类号
0812 ;
摘要
Despite the recent success of Message-passing Graph Neural Networks (MP-GNNs), the strong inductive bias of homophily limits their ability to generalize to heterophilic graphs and leads to the over-smoothing problem. Most existing works attempt to mitigate this issue in the spirit of emphasizing the contribution from similar neighbors and reducing those from dissimilar ones when performing aggregation, where the dissimilarities are utilized passively and their positive effects are ignored, leading to suboptimal performances. Inspired by the idea of attitude polarization in social psychology, that people tend to be more extreme when exposed to an opposite opinion, we propose Polarized Graph Neural Network (Polar-GNN). Specifically, pairwise similarities and dissimilarities of nodes are firstly modeled with node features and topological structure information. And specially, we assign negative weights for those dissimilar ones. Then nodes aggregate the messages on a hyper-sphere through a polarization operation, which effectively exploits both similarities and dissimilarities. Furthermore, we theoretically demonstrate the validity of the proposed operation. Lastly, an elaborately designed loss function is introduced for the hyper-spherical embedding space. Extensive experiments on real-world datasets verify the effectiveness of our model.
引用
收藏
页码:1404 / 1413
页数:10
相关论文
共 50 条
  • [41] A comparison between Recursive Neural Networks and Graph Neural Networks
    Di Massa, Vincenzo
    Monfardini, Gabriele
    Sarti, Lorenzo
    Scarselli, Franco
    Maggini, Marco
    Gori, Marco
    [J]. 2006 IEEE INTERNATIONAL JOINT CONFERENCE ON NEURAL NETWORK PROCEEDINGS, VOLS 1-10, 2006, : 778 - +
  • [42] Beyond graph neural networks with lifted relational neural networks
    Sourek, Gustav
    Zelezny, Filip
    Kuzelka, Ondrej
    [J]. MACHINE LEARNING, 2021, 110 (07) : 1695 - 1738
  • [43] Beyond graph neural networks with lifted relational neural networks
    Gustav Šourek
    Filip Železný
    Ondřej Kuželka
    [J]. Machine Learning, 2021, 110 : 1695 - 1738
  • [44] Graph matching as a graph convolution operator for graph neural networks
    Martineau, Chloé
    Raveaux, Romain
    Conte, Donatello
    Venturini, Gilles
    [J]. Pattern Recognition Letters, 2021, 149 : 59 - 66
  • [45] Graph matching as a graph convolution operator for graph neural networks
    Martineau, Chloe
    Raveaux, Romain
    Conte, Donatello
    Venturini, Gilles
    [J]. PATTERN RECOGNITION LETTERS, 2021, 149 : 59 - 66
  • [46] Graph Unrolling Networks: Interpretable Neural Networks for Graph Signal Denoising
    Chen, Siheng
    Eldar, Yonina C.
    Zhao, Lingxiao
    [J]. IEEE Transactions on Signal Processing, 2021, 69 : 3699 - 3713
  • [47] Graph Unrolling Networks: Interpretable Neural Networks for Graph Signal Denoising
    Chen, Siheng
    Eldar, Yonina C.
    Zhao, Lingxiao
    [J]. IEEE TRANSACTIONS ON SIGNAL PROCESSING, 2021, 69 : 3699 - 3713
  • [48] Graph Structure Learning for Robust Graph Neural Networks
    Jin, Wei
    Ma, Yao
    Liu, Xiaorui
    Tang, Xianfeng
    Wang, Suhang
    Tang, Jiliang
    [J]. KDD '20: PROCEEDINGS OF THE 26TH ACM SIGKDD INTERNATIONAL CONFERENCE ON KNOWLEDGE DISCOVERY & DATA MINING, 2020, : 66 - 74
  • [49] Heterogeneous graph neural networks with denoising for graph embeddings
    Dong, Xinrui
    Zhang, Yijia
    Pang, Kuo
    Chen, Fei
    Lu, Mingyu
    [J]. KNOWLEDGE-BASED SYSTEMS, 2022, 238
  • [50] Spectral Clustering with Graph Neural Networks for Graph Pooling
    Bianchi, Filippo Maria
    Grattarola, Daniele
    Alippi, Cesare
    [J]. INTERNATIONAL CONFERENCE ON MACHINE LEARNING, VOL 119, 2020, 119