Machine Learning Applied to Bank Fraud Detection
EasyChair Preprint 15523, version 2
8 pages•Date: December 11, 2024Abstract
Online payment fraud has been steadily increasing in recent years.
Our focus is on installment payments for e-commerce, which pose a significant risk of customers failing to repay the full amount owed.
To manage this risk, BNP Paribas Personal Finance has developed a system that combines graph databases and artificial intelligence, achieving a 20\% reduction in fraud.
In this article, we propose an extension of this system using a graph neural network (GraphSAGE) combined with an ensemble method (such as Random Forest or XGBoost).
We demonstrate the performance improvements of this combined approach over the initial system using a real anonymized dataset made available to the community.
Keyphrases: Détection de fraudes, Financial Fraud Detection, GNN, Graph Neural Networks, apprentissage machine, detection de fraudes, graph representation learning