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
  • [41] An integrated graph data privacy attack framework based on graph neural networks in IoT
    Zhao, Xiaoran
    Peng, Changgen
    Ding, Hongfa
    Tan, Weijie
    CONCURRENCY AND COMPUTATION-PRACTICE & EXPERIENCE, 2024, 36 (20)
  • [42] Graph Out-of-Distribution Generalization With Controllable Data Augmentation
    Lu, Bin
    Zhao, Ze
    Gan, Xiaoying
    Liang, Shiyu
    Fu, Luoyi
    Wang, Xinbing
    Zhou, Chenghu
    IEEE TRANSACTIONS ON KNOWLEDGE AND DATA ENGINEERING, 2024, 36 (11) : 6317 - 6329
  • [43] Multimodal Continuous Emotion Recognition with Data Augmentation Using Recurrent Neural Networks
    Huang, Jian
    Li, Ya
    Tao, Jianhua
    Lian, Zheng
    Niu, Mingyue
    Yang, Minghao
    PROCEEDINGS OF THE 2018 AUDIO/VISUAL EMOTION CHALLENGE AND WORKSHOP (AVEC'18), 2018, : 57 - 64
  • [44] Generative data augmentation and automated optimization of convolutional neural networks for process monitoring
    Schiemer, Robin
    Rudt, Matthias
    Hubbuch, Juergen
    FRONTIERS IN BIOENGINEERING AND BIOTECHNOLOGY, 2024, 12
  • [45] Fatigue Damage Diagnostics of Composites Using Data Fusion and Data Augmentation With Deep Neural Networks
    Dabetwar, Shweta
    Ekwaro-Osire, Stephen
    Dias, Joao Paulo
    JOURNAL OF NONDESTRUCTIVE EVALUATION, DIAGNOSTICS AND PROGNOSTICS OF ENGINEERING SYSTEMS, 2022, 5 (02):
  • [46] Underwater Image Classification Using Deep Convolutional Neural Networks and Data Augmentation
    Xu, Yifeng
    Zhang, Yang
    Wang, Huigang
    Liu, Xing
    2017 IEEE INTERNATIONAL CONFERENCE ON SIGNAL PROCESSING, COMMUNICATIONS AND COMPUTING (ICSPCC), 2017,
  • [47] Applications of data augmentation in mineral prospectivity prediction based on convolutional neural networks
    Yang, Na
    Zhang, Zhenkai
    Yang, Jianhua
    Hong, Zenglin
    COMPUTERS & GEOSCIENCES, 2022, 161
  • [48] A Data Augmentation Methodology to Improve Age Estimation using Convolutional Neural Networks
    Oliveira, Italo de Pontes
    Peixoto Medeiros, Joao Lucas
    de Sousa, Vinicius Fernandes
    Teixeira Junior, Adalberto Gomes
    Pereira, Eanes Torres
    Gomes, Herman Martins
    2016 29TH SIBGRAPI CONFERENCE ON GRAPHICS, PATTERNS AND IMAGES (SIBGRAPI), 2016, : 88 - 95
  • [49] Data Augmentation for Deep Neural Networks Model in EEG Classification Task: A Review
    He, Chao
    Liu, Jialu
    Zhu, Yuesheng
    Du, Wencai
    FRONTIERS IN HUMAN NEUROSCIENCE, 2021, 15
  • [50] Product failure prediction with missing data using graph neural networks
    Seokho Kang
    Neural Computing and Applications, 2021, 33 : 7225 - 7234