Leveraging graph-based learning for credit card fraud detection: a comparative study of classical, deep learning and graph-based approaches

被引:0
|
作者
Harish, Sunisha [1 ]
Lakhanpal, Chirag [1 ]
Jafari, Amir Hossein [1 ]
机构
[1] Department of Data Science, The George Washington University, Washington, 20052, DC
关键词
Credit card fraud; Deep learning; Graph neural networks; Machine learning; Node classification; RGCN;
D O I
10.1007/s00521-024-10397-7
中图分类号
学科分类号
摘要
Credit card fraud results in staggering financial losses amounting to billions of dollars annually, impacting both merchants and consumers. In light of the escalating prevalence of digital crime and online fraud, it is important for organizations to implement robust and advanced technology to efficiently detect fraud and mitigate the issue. Contemporary solutions heavily rely on classical machine learning (ML) and deep learning (DL) methods to handle such tasks. While these methods have been effective in many aspects of fraud detection, they may not always be sufficient for credit card fraud detection as they aren’t adaptable to detect complex relationships when it comes to transactions. Fraudsters, for example, might set up many coordinated accounts to avoid triggering limitations on individual accounts. In the context of fraud detection, the ability of Graph Neural Networks (GNN’s) to aggregate information contained within the local neighbourhood of a transaction enables them to identify larger patterns that may be missed by just looking at a single transaction. In this research, we conduct a thorough analysis to evaluate the effectiveness of GNNs in improving fraud detection over classical ML and DL methods. We first build an heterogeneous graph architecture with the source, transaction, and destination as our nodes. Next, we leverage Relational Graph Convolutional Network (RGCN) to learn the representations of nodes in our graph and perform node classification on the transaction node. Our experimental results demonstrate that GNN’s outperform classical ML and DL methods. © The Author(s), under exclusive licence to Springer-Verlag London Ltd., part of Springer Nature 2024.
引用
收藏
页码:21873 / 21883
页数:10
相关论文
共 50 条
  • [31] Learning graph-based representations for scene flow estimation
    Zhai, Mingliang
    Gao, Hao
    Liu, Ye
    Nie, Jianhui
    Ni, Kang
    MULTIMEDIA TOOLS AND APPLICATIONS, 2024, 83 (03) : 7317 - 7334
  • [32] Learning graph-based representations for scene flow estimation
    Mingliang Zhai
    Hao Gao
    Ye Liu
    Jianhui Nie
    Kang Ni
    Multimedia Tools and Applications, 2024, 83 : 7317 - 7334
  • [33] A New Graph-Based Deep Learning Model to Predict Flooding with Validation on a Case Study on the Humber River
    Santos, Victor Oliveira
    Rocha, Paulo Alexandre Costa
    Scott, John
    The, Jesse Van Griensven
    Gharabaghi, Bahram
    WATER, 2023, 15 (10)
  • [34] Deep learning, graph-based text representation and classification: a survey, perspectives and challenges
    Phu Pham
    Loan T. T. Nguyen
    Witold Pedrycz
    Bay Vo
    Artificial Intelligence Review, 2023, 56 : 4893 - 4927
  • [35] Deep learning, graph-based text representation and classification: a survey, perspectives and challenges
    Phu Pham
    Loan T T Nguyen
    Pedrycz, Witold
    Vo, Bay
    ARTIFICIAL INTELLIGENCE REVIEW, 2023, 56 (06) : 4893 - 4927
  • [36] Deep Learning and Adaptive Graph-Based Growing Contours for Agricultural Field Extraction
    Wagner, Matthias P.
    Oppelt, Natascha
    REMOTE SENSING, 2020, 12 (12)
  • [37] DeepComNet: Performance evaluation of network topologies using graph-based deep learning
    Geyer, Fabien
    PERFORMANCE EVALUATION, 2019, 130 : 1 - 16
  • [38] Graph-based deep learning frameworks for molecules and solid-state materials
    Gong, Weiyi
    Yan, Qimin
    COMPUTATIONAL MATERIALS SCIENCE, 2021, 195
  • [39] Pseudo Contrastive Learning for graph-based semi-supervised learning
    Lu, Weigang
    Guan, Ziyu
    Zhao, Wei
    Yang, Yaming
    Lv, Yuanhai
    Xing, Lining
    Yu, Baosheng
    Tao, Dacheng
    NEUROCOMPUTING, 2025, 624
  • [40] End-To-End Graph-Based Deep Semi-Supervised Learning with Extended Graph Laplacian
    Wang, Zihao
    Tu, Enmei
    Zhou, Meng
    Yang, Jie
    2020 CHINESE AUTOMATION CONGRESS (CAC 2020), 2020, : 5948 - 5953