AI-based Identity Fraud Detection: A Systematic Review
Journal:
arXiv
Published Date:
Jan 16, 2025
Abstract
With the rapid development of digital services, a large volume of personally
identifiable information (PII) is stored online and is subject to cyberattacks
such as Identity fraud. Most recently, the use of Artificial Intelligence (AI)
enabled deep fake technologies has significantly increased the complexity of
identity fraud. Fraudsters may use these technologies to create highly
sophisticated counterfeit personal identification documents, photos and videos.
These advancements in the identity fraud landscape pose challenges for identity
fraud detection and society at large. There is a pressing need to review and
understand identity fraud detection methods, their limitations and potential
solutions. This research aims to address this important need by using the
well-known systematic literature review method. This paper reviewed a selected
set of 43 papers across 4 major academic literature databases. In particular,
the review results highlight the two types of identity fraud prevention and
detection methods, in-depth and open challenges. The results were also
consolidated into a taxonomy of AI-based identity fraud detection and
prevention methods including key insights and trends. Overall, this paper
provides a foundational knowledge base to researchers and practitioners for
further research and development in this important area of digital identity
fraud.