Learning Graph Representations Through Learning and Propagating Edge Features

被引:3
|
作者
Zhang, Haimin [1 ]
Xia, Jiahao [1 ]
Zhang, Guoqiang [1 ]
Xu, Min [1 ]
机构
[1] Univ Technol Sydney, Fac Engn & Informat Technol, Sch Elect & Data Engn, Ultimo, NSW 2007, Australia
基金
澳大利亚研究理事会;
关键词
Edge feature propagation; graph convolutional networks; graph representation learning; NEURAL-NETWORK;
D O I
10.1109/TNNLS.2022.3228102
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Graph convolutional networks have achieved considerable success in various graph domain tasks. Recently, numerous types of graph convolutional networks have been developed. A typical rule for learning a node's feature in these graph convolutional networks is to aggregate node features from the node's local neighborhood. However, in these models, the interrelation information between adjacent nodes is not well-considered. This information could be helpful to learn improved node embeddings. In this article, we present a graph representation learning framework that generates node embeddings through learning and propagating edge features. Instead of aggregating node features from a local neighborhood, we learn a feature for each edge and update a node's representation by aggregating local edge features. The edge feature is learned from the concatenation of the edge's starting node feature, the input edge feature, and the edge's end node feature. Unlike node feature propagation-based graph networks, our model propagates different features from a node to its neighbors. In addition, we learn an attention vector for each edge in aggregation, enabling the model to focus on important information in each feature dimension. By learning and aggregating edge features, the interrelation between a node and its neighboring nodes is integrated in the aggregated feature, which helps learn improved node embeddings in graph representation learning. Our model is evaluated on graph classification, node classification, graph regression, and multitask binary graph classification on eight popular datasets. The experimental results demonstrate that our model achieves improved performance compared with a wide variety of baseline models.
引用
收藏
页码:8429 / 8440
页数:12
相关论文
共 50 条
  • [21] FairDrop: Biased Edge Dropout for Enhancing Fairness in Graph Representation Learning
    Spinelli I.
    Scardapane S.
    Hussain A.
    Uncini A.
    IEEE Transactions on Artificial Intelligence, 2022, 3 (03): : 344 - 354
  • [22] Explainable, Stable, and Scalable Network Embedding Algorithms for Unsupervised Learning of Graph Representations
    Lu, Ping-En
    Yeh, Chia-Han
    Chang, Cheng-Shang
    IEEE TRANSACTIONS ON COMPUTATIONAL SOCIAL SYSTEMS, 2023, 10 (05) : 2421 - 2438
  • [23] Deep learning and multi-level featurization of graph representations of microstructural data
    Jones, Reese
    Safta, Cosmin
    Frankel, Ari
    COMPUTATIONAL MECHANICS, 2023, 72 (01) : 57 - 75
  • [24] Graph Representation Learning With Adaptive Metric
    Zhang, Chun-Yang
    Cai, Hai-Chun
    Chen, C. L. Philip
    Lin, Yue-Na
    Fang, Wu-Peng
    IEEE TRANSACTIONS ON NETWORK SCIENCE AND ENGINEERING, 2023, 10 (04): : 2074 - 2085
  • [25] Learning Aligned Image-Text Representations Using Graph Attentive Relational Network
    Jing, Ya
    Wang, Wei
    Wang, Liang
    Tan, Tieniu
    IEEE TRANSACTIONS ON IMAGE PROCESSING, 2021, 30 : 1840 - 1852
  • [26] Graph Augmentation Learning
    Yu, Shuo
    Huang, Huafei
    Dao, Minh N.
    Xia, Feng
    COMPANION PROCEEDINGS OF THE WEB CONFERENCE 2022, WWW 2022 COMPANION, 2022, : 1063 - 1072
  • [27] Defect Prediction With Semantics and Context Features of Codes Based on Graph Representation Learning
    Xu, Jiaxi
    Wang, Fei
    Ai, Jun
    IEEE TRANSACTIONS ON RELIABILITY, 2021, 70 (02) : 613 - 625
  • [28] Semi-supervised learning on network using structure features and graph convolution
    Tachibana M.
    Murata T.
    Transactions of the Japanese Society for Artificial Intelligence, 2019, 34 (05):
  • [29] Learning Football Player Features using Graph Embeddings for Player Recommendation System
    Yilmaz, Oznur Ilayda
    Oguducu, Sule Gunduz
    37TH ANNUAL ACM SYMPOSIUM ON APPLIED COMPUTING, 2022, : 577 - 584
  • [30] A Comprehensive Survey on Deep Graph Representation Learning
    Ju, Wei
    Fang, Zheng
    Gu, Yiyang
    Liu, Zequn
    Long, Qingqing
    Qiao, Ziyue
    Qin, Yifang
    Shen, Jianhao
    Sun, Fang
    Xiao, Zhiping
    Yang, Junwei
    Yuan, Jingyang
    Zhao, Yusheng
    Wang, Yifan
    Luo, Xiao
    Zhang, Ming
    NEURAL NETWORKS, 2024, 173