Rationalizing Graph Neural Networks with Data Augmentation

被引:1
作者
Liu, Gang [1 ]
Inae, Eric [1 ]
Luo, Tengfei [1 ]
Jiang, Meng [1 ]
机构
[1] Univ Notre Dame, Notre Dame, IN 46556 USA
关键词
Graph neural network; node classification; graph property prediction; data augmentation; rationalization;
D O I
10.1145/3638781
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Graph rationales are representative subgraph structures that best explain and support the graph neural network (GNN) predictions. Graph rationalization involves the joint identification of these subgraphs during GNN training, resulting in improved interpretability and generalization. GNN is widely used for node-level tasks such as paper classification and graph-level tasks such as molecular property prediction. However, on both levels, little attention has been given to GNN rationalization and the lack of training examples makes it difficult to identify the optimal graph rationales. In this work, we address the problem by proposing a unified data augmentation framework with two novel operations on environment subgraphs to rationalize GNN prediction. We define the environment subgraph as the remaining subgraph after rationale identification and separation. The framework efficiently performs rationale-environment separation in the representation space for a node's neighborhood graph or a graph's complete structure to avoid the high complexity of explicit graph decoding and encoding. We conduct experiments on 17 datasets spanning node classification, graph classification, and graph regression. Results demonstrate that our framework is effective and efficient in rationalizing and enhancing GNNs for different levels of tasks on graphs.
引用
收藏
页数:23
相关论文
共 50 条
  • [1] MixupExplainer: Generalizing Explanations for Graph Neural Networks with Data Augmentation
    Zhang, Jiaxing
    Luo, Dongsheng
    Wei, Hua
    PROCEEDINGS OF THE 29TH ACM SIGKDD CONFERENCE ON KNOWLEDGE DISCOVERY AND DATA MINING, KDD 2023, 2023, : 3286 - 3296
  • [2] Multi-strategy adaptive data augmentation for Graph Neural Networks
    Juan, Xin
    Liang, Xiao
    Xue, Haotian
    Wang, Xin
    EXPERT SYSTEMS WITH APPLICATIONS, 2024, 258
  • [3] Backdoor Attacks on Graph Neural Networks Trained with Data Augmentation
    Yashiki, Shingo
    Takahashi, Chako
    Suzuki, Koutarou
    IEICE TRANSACTIONS ON FUNDAMENTALS OF ELECTRONICS COMMUNICATIONS AND COMPUTER SCIENCES, 2024, E107A (03) : 355 - 358
  • [4] Multichannel Adaptive Data Mixture Augmentation for Graph Neural Networks
    Ye, Zhonglin
    Zhou, Lin
    Li, Mingyuan
    Zhang, Wei
    Liu, Zhen
    Zhao, Haixing
    INTERNATIONAL JOURNAL OF DATA WAREHOUSING AND MINING, 2024, 20 (01)
  • [5] Rumour detection on benchmark twitter datasets using graph neural networks with data augmentation
    Patel, Shaswat
    Bansal, Prince
    Kaur, Preeti
    SOCIAL NETWORK ANALYSIS AND MINING, 2024, 14 (01)
  • [6] Multi-Relation Augmentation for Graph Neural Networks
    Xiao, Shunxin
    Lin, Huibin
    Wang, Jianwen
    Qin, Xiaolong
    Wang, Shiping
    IEEE TRANSACTIONS ON EMERGING TOPICS IN COMPUTATIONAL INTELLIGENCE, 2024, 8 (05): : 3614 - 3627
  • [7] Harnessing collective structure knowledge in data augmentation for graph neural networks
    Ma, Rongrong
    Pang, Guansong
    Chen, Ling
    NEURAL NETWORKS, 2024, 180
  • [8] SStackGNN: Graph Data Augmentation Simplified Stacking Graph Neural Network for Twitter Bot Detection
    Shi, Shuhao
    Chen, Jian
    Wang, Zhengyan
    Zhang, Yuxin
    Zhang, Yongmao
    Fu, Chengqi
    Qiao, Kai
    Yan, Bin
    INTERNATIONAL JOURNAL OF COMPUTATIONAL INTELLIGENCE SYSTEMS, 2024, 17 (01)
  • [9] Towards data augmentation in graph neural network: An overview and evaluation
    Adjeisah, Michael
    Zhu, Xinzhong
    Xu, Huiying
    Ayall, Tewodros Alemu
    COMPUTER SCIENCE REVIEW, 2023, 47
  • [10] Prediction of minimum ignition energy for combustible dust using graph neural networks and SMILES data augmentation
    Shen, Xiaobo
    Zhang, Zhiwei
    Ma, Yunsheng
    Zou, Xiong
    Zhou, Feng
    Wang, Shenghua
    Bao, Qifu
    POWDER TECHNOLOGY, 2023, 429