Affiliation:
1. 1 Faculty of Organization and Informatics , University of Zagreb , Varazdin , Croatia
Abstract
Abstract
The rise of online transactions has led to a corresponding increase in online criminal activities. Account takeover attacks, in particular, are challenging to detect, and novel approaches utilize machine learning to identify compromised accounts. This paper aims to conduct a literature review on account takeover detection and user behavior analysis within the cybersecurity domain. By exploring these areas, the goal is to combat account takeovers and other fraudulent attempts effectively.
Reference79 articles.
1. Kemp, S., D. Buil-Gil, A. Moneva, F. Miro-Llinares, N. Dıaz-Castano. Empty Streets, Busy Internet: A Time-Series Analysis of Cybercrime and Fraud Trends During COVID-19. – Journal of Contemporary Criminal Justice, Vol. 37, 2021, No 4, pp. 480-501.
2. Kawase, R., F. Diana, M. Czeladka, M. Schuler, M. Faust. Internet Fraud: The Case of Account Takeover in Online Marketplace. – In: Proc. of 30th ACM Conference on Hypertext and Social Media, 2019, pp. 181-190.
3. Dekou, R., S. Savo, S. Kufeld, D. Francesca, R. Kawase. Machine Learning Methods for Detecting Fraud in Online Marketplaces. – In: Proc. of CIKM Workshops, 2021.
4. Keele, S., et al. Guidelines for Performing Systematic Literature Reviews in Software Engineering. 2007.
5. Martın, G. A., A. Fernandez-Isabel, I. Martın de Diego, M. Beltran. A Survey for User Behavior Analysis Based on Machine Learning Techniques: Current Models and Applications. – In Applied Intelligence, Vol. 51, 2021, No 8, pp. 6029-6055.