Financial Fraud Detection
Financial fraud detection aims to identify fraudulent activities within financial transactions and networks, primarily focusing on improving accuracy and efficiency while addressing data privacy concerns. Current research emphasizes advanced machine learning models, including graph neural networks (GNNs), quantum machine learning (QML) algorithms, and federated learning (FL) frameworks, to analyze complex transaction patterns and user behavior across diverse data sources. These advancements are crucial for mitigating financial losses, enhancing the security of financial systems, and promoting trust in digital transactions, with a growing focus on explainable AI (XAI) to improve transparency and accountability.
Papers
Transparency and Privacy: The Role of Explainable AI and Federated Learning in Financial Fraud Detection
Tomisin Awosika, Raj Mani Shukla, Bernardi Pranggono
FiFAR: A Fraud Detection Dataset for Learning to Defer
Jean V. Alves, Diogo Leitão, Sérgio Jesus, Marco O. P. Sampaio, Pedro Saleiro, Mário A. T. Figueiredo, Pedro Bizarro