A Causal Disentangled Multi-granularity Graph Classification Method

被引:1
|
作者
Li, Yuan [1 ,2 ]
Liu, Li [1 ,2 ]
Chen, Penggang [1 ,2 ]
Zhang, Youmin [1 ,2 ]
Wang, Guoyin [1 ,2 ]
机构
[1] Chongqing Key Lab Computat Intelligence, Chongqing, Peoples R China
[2] Chongqing Univ Posts & Telecommun, Key Lab Cyberspace Big Data Intelligent Secur, Minist Educ, Chongqing 400065, Peoples R China
来源
ROUGH SETS, IJCRS 2023 | 2023年 / 14481卷
基金
中国国家自然科学基金;
关键词
Multi-granularity; Interpretability; Explainable AI; Causal disentanglement; Graph classification;
D O I
10.1007/978-3-031-50959-9_25
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Graph data widely exists in real life, with large amounts of data and complex structures. It is necessary to map graph data to low-dimensional embedding. Graph classification, a critical graph task, mainly relies on identifying the important substructures within the graph. At present, some graph classification methods do not combine the multi-granularity characteristics of graph data. This lack of granularity distinction in modeling leads to a conflation of key information and false correlations within the model. So, achieving the desired goal of a credible and interpretable model becomes challenging. This paper proposes a causal disentangled multi-granularity graph representation learning method (CDM-GNN) to solve this challenge. The CDM-GNN model disentangles the important substructures and bias parts within the graph from a multi-granularity perspective. The disentanglement of the CDM-GNN model reveals important and bias parts, forming the foundation for its classification task, specifically, model interpretations. The CDM-GNN model exhibits strong classification performance and generates explanatory outcomes aligning with human cognitive patterns. In order to verify the effectiveness of the model, this paper compares the three real-world datasets MUTAG, PTC, and IMDM-M. Six state-of-theart models, namely GCN, GAT, Top-k, ASAPool, SUGAR, and SAT are employed for comparison purposes. Additionally, a qualitative analysis of the interpretation results is conducted.
引用
下载
收藏
页码:354 / 368
页数:15
相关论文
共 50 条
  • [1] Multi-Granularity Causal Structure Learning
    Liang, Jiaxuan
    Wang, Jun
    Yu, Guoxian
    Xia, Shuyin
    Wang, Guoyin
    THIRTY-EIGHTH AAAI CONFERENCE ON ARTIFICIAL INTELLIGENCE, VOL 38 NO 12, 2024, : 13727 - 13735
  • [2] A Multi-Granularity Semantic Extraction Method for Text Classification
    Li, Min
    Liu, Zeyu
    Li, Gang
    Han, Delong
    ADVANCED INTELLIGENT COMPUTING TECHNOLOGY AND APPLICATIONS, PT XIII, ICIC 2024, 2024, 14874 : 224 - 236
  • [3] Multi-Granularity Graph Model (MGGM)
    Ghobril, P
    Tohmé, S
    2005 Conference on Optical Network Design and Modelling, Proceedings: TOWARDS THE BROADBAND-FOR-ALL ERA, 2005, : 383 - 392
  • [4] Which Matters Most in Making Fund Investment Decisions? A Multi-granularity Graph Disentangled Learning Framework
    Gan, Chunjing
    Hu, Binbin
    Huang, Bo
    Zhao, Tianyu
    Lin, Yingru
    Zhong, Wenliang
    Zhang, Zhiqiang
    Zhou, Jun
    Shi, Chuan
    PROCEEDINGS OF THE 46TH INTERNATIONAL ACM SIGIR CONFERENCE ON RESEARCH AND DEVELOPMENT IN INFORMATION RETRIEVAL, SIGIR 2023, 2023, : 2516 - 2520
  • [5] Deconfounded hierarchical multi-granularity classification
    Zhao, Ziyu
    Gan, Leilei
    Shen, Tao
    Kuang, Kun
    Wu, Fei
    COMPUTER VISION AND IMAGE UNDERSTANDING, 2024, 248
  • [6] Hierarchical Multi-Granularity Interaction Graph Convolutional Network for Long Document Classification
    Liu, Tengfei
    Hu, Yongli
    Gao, Junbin
    Sun, Yanfeng
    Yin, Baocai
    IEEE-ACM TRANSACTIONS ON AUDIO SPEECH AND LANGUAGE PROCESSING, 2024, 32 : 1762 - 1775
  • [7] GNN-MgrPool: Enhanced graph neural networks with multi-granularity pooling for graph classification
    Sun, Haichao
    Wang, Guoyin
    Liu, Qun
    Guo, Yike
    INFORMATION SCIENCES, 2024, 680
  • [8] Multi-Granularity Contrastive Learning for Graph with Hierarchical Pooling
    Liu, Peishuo
    Zhou, Cangqi
    Liu, Xiao
    Zhang, Jing
    Li, Qianmu
    ARTIFICIAL NEURAL NETWORKS AND MACHINE LEARNING, ICANN 2023, PT IV, 2023, 14257 : 499 - 511
  • [9] A Multi-Granularity Heterogeneous Graph for Extractive Text Summarization
    Zhao, Henghui
    Zhang, Wensheng
    Huang, Mengxing
    Feng, Siling
    Wu, Yuanyuan
    ELECTRONICS, 2023, 12 (10)
  • [10] Multi-Granularity Federated Learning by Graph-Partitioning
    Dai, Ziming
    Zhao, Yunfeng
    Qiu, Chao
    Wang, Xiaofei
    Yao, Haipeng
    Niyato, Dusit
    IEEE Transactions on Cloud Computing, 2025, 13 (01): : 18 - 33