Behavioral analytics in digital payments: A conceptual analysis of anti-money laundering techniques
1 Independent Researcher, Irving TX, USA.
2 Independent Researcher, Bonny Island, Nigeria.
3 Reeks Corporate Services, Lagos, Nigeria.
Review
International Journal of Scholarly Research in Multidisciplinary Studies, 2024, 05(02), 052-072.
Article DOI: 10.56781/ijsrms.2024.5.2.0047
Publication history:
Received on 08 November 2024; revised on 14 December 2024; accepted on 17 December 2024
Abstract:
The rise of digital payments has revolutionized financial transactions, yet it has also introduced significant challenges related to Anti-Money Laundering (AML) efforts. This paper provides a conceptual analysis of the role of behavioral analytics in enhancing AML techniques within digital payment systems. The primary objective is to explore how behavioral analytics can be employed to identify patterns of fraudulent activities, detect suspicious behavior, and mitigate risks associated with money laundering. By examining various behavioral analytics methodologies, such as machine learning, data mining, and anomaly detection, the study highlights their effectiveness in real-time monitoring and decision-making for AML compliance. Key findings suggest that behavioral analytics offers a more nuanced approach to AML by focusing on transactional behaviors rather than solely relying on static rules-based systems. This dynamic method not only improves detection accuracy but also reduces false positives, enhancing overall operational efficiency. The paper concludes that integrating behavioral analytics into AML frameworks is essential for financial institutions to stay ahead of evolving money laundering tactics, ensuring a proactive and adaptive approach to safeguarding digital payment ecosystems. The analysis underscores the need for continuous innovation in AML strategies, with behavioral analytics playing a central role in future-proofing digital payment security.
Keywords:
Behavioral Analytics; Anti-Money Laundering (AML); Financial Crime Detection; Digital Payments; Fraud Prevention; Machine Learning (ML); Artificial Intelligence (AI); Customer Profiling; Real-Time Monitoring; Predictive Analytics; Data Privacy; Regulatory Compliance; Transaction Monitoring; Financial Institutions; Privacy-Preserving Technologies
Full text article in PDF:
Copyright information:
Copyright © 2024 Author(s) retain the copyright of this article. This article is published under the terms of the Creative Commons Attribution Liscense 4.0