MPOCryptoML: Multi-Pattern based Off-Chain Crypto Money Laundering Detection
Yasaman Samadi, Hai Dong, Xiaoyu Xia

TL;DR
MPOCryptoML is a novel multi-pattern detection model that leverages graph algorithms and transaction analysis to improve off-chain cryptocurrency money laundering detection accuracy.
Contribution
The paper introduces MPOCryptoML, a multi-pattern detection framework that explicitly models diverse laundering structures using new algorithms and an anomaly scoring system.
Findings
Up to 9.13% improvement in precision
Up to 10.16% improvement in recall
Validated on multiple public datasets
Abstract
Recent advancements in money laundering detection have demonstrated the potential of using graph neural networks to capture laundering patterns accurately. However, existing models are not explicitly designed to detect the diverse patterns of off-chain cryptocurrency money laundering. Neglecting any laundering pattern introduces critical detection gaps, as each pattern reflects unique transactional structures that facilitate the obfuscation of illicit fund origins and movements. Failure to account for these patterns may result in under-detection or omission of specific laundering activities, diminishing model accuracy and allowing schemes to bypass detection. To address this gap, we propose the MPOCryptoML model to effectively detect multiple laundering patterns in cryptocurrency transactions. MPOCryptoML includes the development of a multi-source Personalized PageRank algorithm to…
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Taxonomy
TopicsBlockchain Technology Applications and Security
