Credit Card Fraud Detection using Machine Learning

Authors

  • Harsh Assistant Professor, Department of Computer Applications, Panipat Institute of Engineering & Technology, Samalkha

Keywords:

Data Security, Credit card fraud detection, Network Security

Abstract

Credit card fraud detection is presently the most frequently occurring problem in the present world. This is due to the rise in both online transactions and e-commerce platforms. Credit card fraud generally happens when the card was stolen for any of the unauthorized purposes or even when the fraudster uses the credit card information for his use. In the present world, we are facing a lot of credit card problems. To detect the fraudulent activities the credit card fraud detection system was introduced. In this paper, machine learning algorithms are used to detect credit card fraud. Standard models are firstly used. Then, hybrid methods which use Ada Boost and majority voting methods are applied. To evaluate the model efficacy, a publicly available credit card data set is used. Then, a real-world credit card data set from a financial institution is analyzed. In addition, noise is added to the data samples to further assess the robustness of the algorithms. The experimental results positively indicate that the majority voting method achieves good accuracy rates in detecting fraud cases in credit cards.

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Published

2024-06-30

How to Cite

Harsh. (2024). Credit Card Fraud Detection using Machine Learning. American Journal of Engineering , Mechanics and Architecture (2993-2637), 2(6), 240–248. Retrieved from http://grnjournal.us/index.php/AJEMA/article/view/5328