Abstract
Background: The banking sector is vital to every economy as it provides the necessary finance for all economic activities.
However, it faces significant threats from cyber criminals. Objectives: The article aims to explore the nature and
prevalence of electronic banking fraud and proposes practical solutions to mitigate it in South Africa. To combat
electronic banking fraud and improve transparency and accountability in South Africa, it is crucial to understand the
nature and prevalence of such fraud. This knowledge is vital for creating effective anti-fraud solutions.
Methods/Approach: The study employed qualitative methods, including interviews with fifteen participants from the
management of risk departments in five South African banks. It applied thematic analysis with Maxqda 24 software to
identify patterns, generate codes, and categorise them. Key themes and concepts were supported by direct quotations.
Results: Electronic banking fraud in South Africa is on the rise despite significant investments in security measures by
banks. To effectively combat it and protect depositors’ funds and assets, banks need to adopt modern technological
solutions, particularly those utilising machine learning. Conclusions: Fraud poses major risks to the banking sector,
requiring comprehensive strategies that incorporate advanced technologies and strong risk management. By proactively
using machine learning algorithms, banks can improve fraud detection and prevention, ensuring secure and trustworthy
digital transactions. The study reveals the nature and prevalence of electronic banking fraud in South Africa. Additionally,
it suggests implementing proactive and robust mitigation strategies, leveraging machine learning algorithms, to
effectively combat e-banking fraud and enhance the accountability of South African banks.