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CaT-GNN: Enhancing Credit Card Fraud Detection via Causal Temporal Graph Neural Networks

Author

Listed:
  • Yifan Duan
  • Guibin Zhang
  • Shilong Wang
  • Xiaojiang Peng
  • Wang Ziqi
  • Junyuan Mao
  • Hao Wu
  • Xinke Jiang
  • Kun Wang

Abstract

Credit card fraud poses a significant threat to the economy. While Graph Neural Network (GNN)-based fraud detection methods perform well, they often overlook the causal effect of a node's local structure on predictions. This paper introduces a novel method for credit card fraud detection, the \textbf{\underline{Ca}}usal \textbf{\underline{T}}emporal \textbf{\underline{G}}raph \textbf{\underline{N}}eural \textbf{N}etwork (CaT-GNN), which leverages causal invariant learning to reveal inherent correlations within transaction data. By decomposing the problem into discovery and intervention phases, CaT-GNN identifies causal nodes within the transaction graph and applies a causal mixup strategy to enhance the model's robustness and interpretability. CaT-GNN consists of two key components: Causal-Inspector and Causal-Intervener. The Causal-Inspector utilizes attention weights in the temporal attention mechanism to identify causal and environment nodes without introducing additional parameters. Subsequently, the Causal-Intervener performs a causal mixup enhancement on environment nodes based on the set of nodes. Evaluated on three datasets, including a private financial dataset and two public datasets, CaT-GNN demonstrates superior performance over existing state-of-the-art methods. Our findings highlight the potential of integrating causal reasoning with graph neural networks to improve fraud detection capabilities in financial transactions.

Suggested Citation

  • Yifan Duan & Guibin Zhang & Shilong Wang & Xiaojiang Peng & Wang Ziqi & Junyuan Mao & Hao Wu & Xinke Jiang & Kun Wang, 2024. "CaT-GNN: Enhancing Credit Card Fraud Detection via Causal Temporal Graph Neural Networks," Papers 2402.14708, arXiv.org.
  • Handle: RePEc:arx:papers:2402.14708
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