AI RESEARCH
TransXion: A High-Fidelity Graph Benchmark for Realistic Anti-Money Laundering
arXiv CS.LG
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ArXi:2604.17420v1 Announce Type: new Money laundering poses severe risks to global financial systems, driving the widespread adoption of machine learning for transaction monitoring. However, progress remains stifled by the lack of realistic benchmarks. Existing transaction-graph datasets suffer from two pervasive limitations: (i) they provide sparse node-level semantics beyond anonymized identifiers, and (ii) they rely on template-driven anomaly injection, which biases benchmarks toward static structural motifs and yields overly optimistic assessments of model robustness.