Revolutionizing Fraud Detection in Banking Using Machine Learning Techniques

Authors

  • Siti Ramadhani School of Information Systems, Universitas Informatika Indonesia, Surabaya, Indonesia Author
  • Arif Widjaya Department of Computer Science, Universitas Teknologi Nusantara, Jakarta, Indonesia Author

DOI:

https://doi.org/10.5281/

Keywords:

Tackling fraud, Machine learning, financial industry, Support vector machines, logistic regression, Black-box

Abstract

In the rapidly evolving financial landscape, fraud detection remains a critical issue for banks worldwide. Traditional methods of fraud detection have become insufficient to address the sophisticated schemes employed by fraudsters. Machine learning (ML) techniques present a transformative approach to tackling fraud, offering dynamic, adaptive, and efficient detection methods. This paper explores the application of machine learning in revolutionizing fraud detection within the banking sector, focusing on the benefits, challenges, and future potential of ML-based solutions.

References

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Published

2024-09-24

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