Learning Graph Matching with Graph Neural Networks

被引:0
|
作者
Dobler, Kalvin [1 ]
Riesen, Kaspar [1 ]
机构
[1] Univ Bern, Inst Comp Sci, Neubruckstr 10, CH-3012 Bern, Switzerland
来源
ARTIFICIAL NEURAL NETWORKS IN PATTERN RECOGNITION, ANNPR 2024 | 2024年 / 15154卷
基金
瑞士国家科学基金会;
关键词
Structural Pattern Recognition; Graph Matching; Graph Edit Distance; Graph Representation Learning;
D O I
10.1007/978-3-031-71602-7_1
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Graph matching aims at evaluating the dissimilarity of two graphs by defining a constrained correspondence between their nodes and edges. Error-tolerant graph matching, for instance, introduces the concept of a cost for penalizing structural differences in the matching. A popular method for this approach is graph edit distance, which is based on the cost of the minimal sequence of edit operations to transform a source graph into a target graph. One of the main problems of graph edit distance is the computational complexity, which is exponential in its exact form. In recent years, several approximation methods for graph edit distance have been presented which offer polynomial runtimes. In this paper, we approach the graph edit distance problem in a fundamentally different way. In particular, we propose to learn graph edit distance by means of graph neural networks. In a comprehensive experimental evaluation on six data sets, we verify that our approach not only provides comparable classification performance but also substantially reduces the runtime compared to a prominent algorithm for approximate graph edit distance computation.
引用
收藏
页码:3 / 12
页数:10
相关论文
共 50 条
  • [31] Graph Reduction Neural Networks for Structural Pattern Recognition
    Gillioz, Anthony
    Riesen, Kaspar
    STRUCTURAL, SYNTACTIC, AND STATISTICAL PATTERN RECOGNITION, S+SSPR 2022, 2022, 13813 : 64 - 73
  • [32] Graph Neural Networks with Stability and Discernability
    Thee, Jong Ho
    Shin, Hyunjung
    2022 IEEE INTERNATIONAL CONFERENCE ON BIG DATA AND SMART COMPUTING (IEEE BIGCOMP 2022), 2022, : 108 - 113
  • [33] Graph Neural Networks With Lifting-Based Adaptive Graph Wavelets
    Xu, Mingxing
    Dai, Wenrui
    Li, Chenglin
    Zou, Junni
    Xiong, Hongkai
    Frossard, Pascal
    IEEE TRANSACTIONS ON SIGNAL AND INFORMATION PROCESSING OVER NETWORKS, 2022, 8 : 63 - 77
  • [34] A Comprehensive Survey on Graph Neural Networks
    Wu, Zonghan
    Pan, Shirui
    Chen, Fengwen
    Long, Guodong
    Zhang, Chengqi
    Yu, Philip S.
    IEEE TRANSACTIONS ON NEURAL NETWORKS AND LEARNING SYSTEMS, 2021, 32 (01) : 4 - 24
  • [35] Graph Matching Based Connectomic Biomarker with Learning for Brain Disorders
    Shen, Rui Sherry
    Alappatt, Jacob A.
    Parker, Drew
    Kim, Junghoon
    Verma, Ragini
    Osmanlioglu, Yusuf
    UNCERTAINTY FOR SAFE UTILIZATION OF MACHINE LEARNING IN MEDICAL IMAGING, AND GRAPHS IN BIOMEDICAL IMAGE ANALYSIS, UNSURE 2020, GRAIL 2020, 2020, 12443 : 131 - 141
  • [36] Graph Neural Networks: A bibliometrics overview
    Keramatfar, Abdalsamad
    Rafiee, Mohadeseh
    Amirkhani, Hossein
    MACHINE LEARNING WITH APPLICATIONS, 2022, 10
  • [37] Graph-adaptive Rectified Linear Unit for Graph Neural Networks
    Zhang, Yifei
    Zhu, Hao
    Meng, Ziqiao
    Koniusz, Piotr
    King, Irwin
    PROCEEDINGS OF THE ACM WEB CONFERENCE 2022 (WWW'22), 2022, : 1331 - 1339
  • [38] Maximizing Influence with Graph Neural Networks
    Panagopoulos, George
    Tziortziotis, Nikolaos
    Vazirgiannis, Michalis
    Malliaros, Fragkiskos D.
    PROCEEDINGS OF THE 2023 IEEE/ACM INTERNATIONAL CONFERENCE ON ADVANCES IN SOCIAL NETWORKS ANALYSIS AND MINING, ASONAM 2023, 2023, : 237 - 244
  • [39] Everything is connected: Graph neural networks
    Velickovic, Petar
    CURRENT OPINION IN STRUCTURAL BIOLOGY, 2023, 79
  • [40] Towards Deeper Graph Neural Networks
    Liu, Meng
    Gao, Hongyang
    Ji, Shuiwang
    KDD '20: PROCEEDINGS OF THE 26TH ACM SIGKDD INTERNATIONAL CONFERENCE ON KNOWLEDGE DISCOVERY & DATA MINING, 2020, : 338 - 348