A systematic review of literature on credit card cyber fraud detection using machine and deep learning

Author:

Marazqah Btoush Eyad Abdel Latif1,Zhou Xujuan1,Gururajan Raj12,Chan Ka Ching1,Genrich Rohan1,Sankaran Prema3

Affiliation:

1. School of Business, University of Southern Queensland, Toowoomba, QLD, Australia

2. School of Computing, SRM Institute of Science and Technology, Chennai, India

3. School of Management, Presidency University, Bangalore, India

Abstract

The increasing spread of cyberattacks and crimes makes cyber security a top priority in the banking industry. Credit card cyber fraud is a major security risk worldwide. Conventional anomaly detection and rule-based techniques are two of the most common utilized approaches for detecting cyber fraud, however, they are the most time-consuming, resource-intensive, and inaccurate. Machine learning is one of the techniques gaining popularity and playing a significant role in this field. This study examines and synthesizes previous studies on the credit card cyber fraud detection. This review focuses specifically on exploring machine learning/deep learning approaches. In our review, we identified 181 research articles, published from 2019 to 2021. For the benefit of researchers, review of machine learning/deep learning techniques and their relevance in credit card cyber fraud detection is presented. Our review provides direction for choosing the most suitable techniques. This review also discusses the major problems, gaps, and limits in detecting cyber fraud in credit card and recommend research directions for the future. This comprehensive review enables researchers and banking industry to conduct innovation projects for cyber fraud detection.

Publisher

PeerJ

Subject

General Computer Science

Reference189 articles.

1. Comparative analysis of back-propagation neural network and K-means clustering algorithm in fraud detection in online credit card transactions;Abdulsalami;Fountain Journal of Natural and Applied Sciences,2019

2. Credit card fraud detection using machine learning classification algorithms over highly imbalanced data;Adityasundar;Journal of Science and Technology,2020

3. Identity theft detection using machine learning;Agarwal;International Journal for Research in Applied Science and Engineering Technology,2021

4. Hybrid CNN-BILSTM-attention based identification and prevention system for banking transactions;Agarwal;NVEO-Natural Volatiles and Essential Oils Journal,2021

5. Hidden Markov model application for credit card fraud detection systems;Agbakwuru;International Journal of Innovative Science and Research,2021

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