SCAFDS: Edge-Feature Graph Attention for Interbank Fraud Detection with Attribution-Grounded SAR Generation
Mohammad Nasir Uddin

TL;DR
SCAFDS is a comprehensive graph-based system for detecting interbank fraud, generating traceable SAR narratives, and updating risk assessments through adaptive feedback, significantly improving detection performance over prior methods.
Contribution
The paper introduces SCAFDS, a novel interbank fraud detection pipeline that incorporates fraud co-occurrence features, attention mechanisms, and attribution-grounded SAR narrative generation.
Findings
Achieves significant improvements in AUPRC and AUROC over baseline models.
Demonstrates effective fraud risk scoring and narrative traceability.
Validates partial effectiveness using enforcement records.
Abstract
The U.S. financial system processes approximately 1.3 million interbank transactions daily, yet no system in the reviewed literature models fraud propagation across the interbank network using fraud co-occurrence edge features. Prior interbank GNN architectures model credit contagion using credit distress supervision signals, producing systems misaligned for fraud forensics. No existing system generates SAR narratives with per-assertion forensic traceability to specific numerical detection outputs, creating regulatory auditability gaps in FinCEN-submitted reports. This paper introduces SCAFDS (Systemic Contagion-Aware Fraud Detection System), a seven-stage integrated surveillance pipeline addressing five structural limitations of prior art: (1) fraud-specific interbank topology encoding using fraud co-occurrence frequency metrics f(u,v,t) derived from FinCEN SAR registry records; (2)…
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