IEEE Access | |
Transfer Learning Strategies for Credit Card Fraud Detection | |
Liyun He-Guelton1  Theo Verhelst1  Gianluca Bontempi1  Bertrand Lebichot2  Yann-Ael Le Borgne2  Frederic Oble2  | |
[1] Libre de Bruxelles (ULB), Brussels, Belgium;Machine Learning Group, Computer Science Department, Faculty of Sciences, Universit&x00E9; | |
关键词: Fraud detection; domain adaptation; transfer learning; | |
DOI : 10.1109/ACCESS.2021.3104472 | |
来源: DOAJ |
【 摘 要 】
Credit card fraud jeopardizes the trust of customers in e-commerce transactions. This led in recent years to major advances in the design of automatic Fraud Detection Systems (FDS) able to detect fraudulent transactions with short reaction time and high precision. Nevertheless, the heterogeneous nature of the fraud behavior makes it difficult to tailor existing systems to different contexts (e.g. new payment systems, different countries and/or population segments). Given the high cost (research, prototype development, and implementation in production) of designing data-driven FDSs, it is crucial for transactional companies to define procedures able to adapt existing pipelines to new challenges. From an AI/machine learning perspective, this is known as the problem of
【 授权许可】
Unknown