LineMVGNN: Anti-Money Laundering with Line-Graph-Assisted Multi-View Graph Neural Networks
arXiv cs.LG / 3/26/2026
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Key Points
- The paper introduces LineMVGNN, a spatial graph neural network approach for anti-money laundering (AML) that improves over rule-based systems by learning from transaction-graph data.
- LineMVGNN uses two-way message passing on a multi-view graph neural network module and adds a “line-graph” view to better propagate information across payment and receipt relationships.
- The method is motivated by limitations of existing spectral GNNs (edge-feature handling, interpretability, scalability) and spatial GNNs (insufficient modeling of money flow).
- Experiments on an Ethereum phishing transaction dataset and an industry financial payment dataset show LineMVGNN outperforms state-of-the-art AML-related graph learning methods.
- The authors also address practical considerations including scalability, adversarial robustness, and regulatory implications for deploying AML systems.
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