Author
Listed:
- Xiaomei Feng
(Faculty of Applied Sciences, Macao Polytechnic University, R. de Luis Gonzaga Gomes, Macao, China)
- Song-Kyoo Kim
(Faculty of Applied Sciences, Macao Polytechnic University, R. de Luis Gonzaga Gomes, Macao, China)
Abstract
This research deals with the critical issue of credit card fraud, a problem that has escalated in the last decade due to the significant increase in credit card usage, largely driven by advances in international trade, e-commerce, and FinTech. With global losses projected to exceed USD 400 billion in the next decade, the urgent need for effective fraud detection systems is apparent. Our study leverages the power of machine learning (ML) and presents a novel approach to credit card fraud detection. We used the European cardholders dataset for model training, addressing the data imbalance issue that often hinders the effectiveness of the learning process. As a key innovative element, we introduce compact data learning (CDL), a powerful tool for reducing the size and complexity of the training dataset without sacrificing the accuracy of the ML system. Comparative experiments have shown that our CDL-adapted feature reduction outperforms various ML algorithms and feature reduction methods. The findings of this research not only contribute to the theoretical foundations of fraud detection but also provide practical implications for the financial sector, which can benefit immensely from the enhanced fraud detection system.
Suggested Citation
Xiaomei Feng & Song-Kyoo Kim, 2024.
"Novel Machine Learning Based Credit Card Fraud Detection Systems,"
Mathematics, MDPI, vol. 12(12), pages 1-11, June.
Handle:
RePEc:gam:jmathe:v:12:y:2024:i:12:p:1869-:d:1415478
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