Title |
Machine learning in money laundering detection over blockchain technology / |
Authors |
Venčkauskas, Algimantas ; Grigaliūnas, Šarūnas ; Pocius, Linas ; Brūzgienė, Rasa ; Romanovs, Andrejs |
DOI |
10.1109/ACCESS.2024.3452003 |
Full Text |
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Is Part of |
IEEE Access.. Piscataway, NJ : IEEE. 2024, Early access, p. 1-20.. eISSN 2169-3536 |
Keywords [eng] |
Blockchain ; cryptocurrency ; cybercrime ; machine learning ; money laundering |
Abstract [eng] |
Layering through cryptocurrency transactions represents a sophisticated mechanism for laundering money within cybercrime circles. This process methodically merges illegal funds into the legitimate financial system. Blockchain technology plays a crucial role in this integration by facilitating the quick and automated dispersal of assets across various digital wallets and exchanges. Machine learning emerges as a powerful tool for analyzing and identifying illicit transactions within Blockchain networks; however, a significant challenge remains in the form of a gap in advanced pattern recognition algorithms. This paper introduces a novel machine learning-based approach called Value-driven-Transactional tracking Analytics for Crypto compliance (VTAC) for the detection of illegal crypto transactions via Blockchain. The approach combines machine learning algorithms with a pre-training process, normalization, model training, and a de-anonymization process to analyze and identify illicit transactions effectively. Experimental evaluations show VTAC's capability to detect illegal transactions with a 97.5% accuracy using the XG Boost model, outperforming existing methods with an accuracy of up to 95.9%. Key performance metrics, including precision, recall, and F1-score, consistently exceeded 95%, highlighting VTAC's enhanced precision and reliability. The proposed solution will serve as an advisory framework to help financial crime investigators enhance the detection and reporting of suspicious cryptocurrency transactions in cyberspace. |
Published |
Piscataway, NJ : IEEE |
Type |
Journal article |
Language |
English |
Publication date |
2024 |
CC license |
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