AI in Fraud Detection: Leveraging Real-Time Machine Learning for Financial Security

Authors

  • Ravi Teja Potla Department Of Information Technology, Slalom Consulting, USA Author

Keywords:

Artificial Intelligence, Fraud Detection, Machine Learning, Financial Security, Real-Time Analytics, Anomaly Detection, Predictive Analytics, Transaction Monitoring

Abstract

In an era where digital transactions dominate the global economy, fraud detection has become a cornerstone of financial security. Traditional fraud detection systems, which rely heavily on rule-based methodologies, are increasingly being outpaced by the sophisticated techniques employed by modern fraudsters. These legacy systems struggle with adapting to the fast-evolving landscape of digital fraud, often producing a high number of false positives and suffering from delayed detection. As financial transactions increase in both volume and complexity, the demand for more agile, accurate, and real-time fraud detection systems is paramount.

This paper delves into the use of real-time machine learning models in revolutionizing fraud detection. Unlike static, rule-based systems, real-time machine learning models can continuously learn from vast datasets, identifying suspicious activities as they happen. These models not only improve detection speed but also significantly reduce false positives, ensuring that legitimate customer transactions remain uninterrupted. By leveraging supervised learning models like Random Forests and Gradient Boosting Machines for classification tasks, as well as unsupervised learning techniques like Autoencoders for anomaly detection, machine learning can process large transaction datasets with unprecedented efficiency.

We explore the challenges involved in implementing real-time machine learning models for fraud detection, such as ensuring scalability, reducing system latency, and maintaining data privacy. Furthermore, this paper addresses the ethical considerations surrounding AI-driven fraud detection, particularly in terms of transparency and accountability. The integration of Explainable AI (XAI) techniques into fraud detection models provides financial institutions with the ability to understand and explain the decisions made by machine learning algorithms, thus improving trust and compliance with regulatory frameworks.

The future of fraud detection lies in hybrid AI systems that combine various machine learning models, reinforced with real-time data processing capabilities and enhanced by blockchain technology for greater security and transparency. This paper concludes by discussing the potential of these hybrid models to redefine fraud detection, ensuring financial institutions are better equipped to combat increasingly sophisticated fraudulent activities.

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Published

28-10-2023

How to Cite

[1]
R. T. Potla, “AI in Fraud Detection: Leveraging Real-Time Machine Learning for Financial Security”, J. of Artificial Int. Research and App., vol. 3, no. 2, pp. 534–549, Oct. 2023, Accessed: Dec. 23, 2024. [Online]. Available: https://aimlstudies.co.uk/index.php/jaira/article/view/189

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