ATM-GAD: Adaptive Temporal Motif Graph Anomaly Detection for Financial Transaction Networks
Zhang, Zeyue, Song, Lin, Bao, Erkang, Lv, Xiaoling, Wang, Xinyue
–arXiv.org Artificial Intelligence
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.
arXiv.org Artificial Intelligence
Aug-29-2025
- Country:
- Asia > China
- Guangdong Province > Guangzhou (0.04)
- North America > United States (0.28)
- Asia > China
- Genre:
- Research Report (1.00)
- Industry:
- Banking & Finance (1.00)
- Law Enforcement & Public Safety > Fraud (1.00)
- Technology: