ATM-GAD: Adaptive Temporal Motif Graph Anomaly Detection for Financial Transaction Networks
ATM-GAD: Adaptive Temporal Motif Graph Anomaly Detection for Financial Transaction Networks
Financial fraud detection is essential to safeguard billions of dollars, yet the intertwined entities and fast-changing transaction behaviors in modern financial systems routinely defeat conventional machine learning models. Recent graph-based detectors make headway by representing transactions as networks, but they still overlook two fraud hallmarks rooted in time: (1) temporal motifs--recurring, telltale subgraphs that reveal suspicious money flows as they unfold--and (2) account-specific intervals of anomalous activity, when fraud surfaces only in short bursts unique to each entity. To exploit both signals, we introduce ATM-GAD, an adaptive graph neural network that leverages temporal motifs for financial anomaly detection. A Temporal Motif Extractor condenses each account's transaction history into the most informative motifs, preserving both topology and temporal patterns. These motifs are then analyzed by dual-attention blocks: IntraA reasons over interactions within a single motif, while InterA aggregates evidence across motifs to expose multi-step fraud schemes. In parallel, a differentiable Adaptive Time-Window Learner tailors the observation window for every node, allowing the model to focus precisely on the most revealing time slices. Experiments on four real-world datasets show that ATM-GAD consistently outperforms seven strong anomaly-detection baselines, uncovering fraud patterns missed by earlier methods.
Zeyue Zhang、Lin Song、Erkang Bao、Xiaoling Lv、Xinyue Wang
财政、金融
Zeyue Zhang,Lin Song,Erkang Bao,Xiaoling Lv,Xinyue Wang.ATM-GAD: Adaptive Temporal Motif Graph Anomaly Detection for Financial Transaction Networks[EB/OL].(2025-08-28)[2025-09-05].https://arxiv.org/abs/2508.20829.点此复制
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