
handle: 11368/3055524 , 2434/961919
In the context of online banking, new users have to register their information to become clients through mobile applications; this process is called digital onboarding. Fraudsters often commit identity fraud by impersonating other people to obtain access to banking services by using personal data obtained illegally and causing damage to the organisation’s reputation and resources. Detecting fraudulent users by their onboarding process is not a trivial task, as it is difficult to identify possible vulnerabilities in the process to be exploited. Furthermore, the modus operandi for differentiating the behaviour of fraudulent actors and legitimate users is unclear. In this work, we propose the usage of a process mining (PM) approach to detect identity fraud in digital onboarding using a real fintech event log. The proposed PM approach is capable of modelling the behaviour of users as they go through a digital onboarding process, while also providing insight into the process itself. The results of PM techniques and the machine learning classifiers showed a promising 80% accuracy rate in classifying users as fraudulent or legitimate. Furthermore, the application of process discovery in the event log dataset produced an insightful visual model of the onboarding process.
fraud detection, Engineering economy, predictive process monitoring, fintech, TA177.4-185, digital onboarding; fraud detection; predictive process monitoring; fintech;, digital onboarding, digital onboarding; fraud detection; predictive process monitoring; fintech
fraud detection, Engineering economy, predictive process monitoring, fintech, TA177.4-185, digital onboarding; fraud detection; predictive process monitoring; fintech;, digital onboarding, digital onboarding; fraud detection; predictive process monitoring; fintech
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| impulse This indicator reflects the initial momentum of an article directly after its publication, based on the underlying citation network. | Top 10% |
