ARCHIVES

Review Article

Credit Card Fraud Detection: A Comprehensive Review of Machine Learning Techniques

Dr. Durgadevi P1 M Adethya2
1 2 Department of Computer Science and Engineering, SRM Institute of Science and Technology Vadapalani, Chennai, Tamilnadu, India.

Published Online: September-December 2025

Pages: 242-248

Abstract

Credit card fraud detection has emerged as a critical application domain for machine learning, driven by the exponential growth of digital payment systems and increasingly sophisticated fraud schemes. This comprehensive review analyzes the current state of machine learning techniques for detecting fraudulent credit card transactions, examining multiple research papers from several academic databases. Through systematic analysis of recent literature, we explore traditional and emerging methodologies, evaluate their effectiveness, identify key chal- lenges including class imbalance and concept drift, and propose future research directions. Our findings indicate that ensemble methods and gradient boosting dominate current practice, while deep learning and hybrid approaches show promise for novel fraud patterns. The field faces persistent challenges in real-time processing, evolving fraud tactics, and limited public datasets. This review provides researchers and practitioners with a com- prehensive understanding of the current landscape and identifies promising avenues for future development

Related Articles

2025

Transforming Cyber-Physical Systems: Machine Learning for Secure and Efficient Solutions

2025

Exploring AI Techniques for Quantum Threat Detection and Prevention

2025

Maturity Models for Business Intelligence: An Overview

2025

INSPIRO: An AI Driven Institution Auditor

2025

Adaptive AI Framework for Anomaly Detection and DDoS Mitigation in Distributed Systems

2025

Predictive Modeling for College Admission Using Machine Learning and Statistical Methods

Share Article

X
LinkedIn
Facebook
WhatsApp

Or copy link

https://test.indjcst.com/archives/10.59256/indjcst.20250403038

*Instagram doesn't support direct link sharing from web. Copy the link and share it in your Instagram story or post.