APATE: A novel approach for automated credit card transaction fraud detection using network-based extensions

作者:

Highlights:

• We develop a fraud detection system for credit card transactions combining RFM variables and Social Network Analysis.

• The system profiles both the purchasing behavior of the credit card holder and the dynamics between merchants and customers.

• Results show AUC values of 0.98 in the best case: RFM and Social Network-related variables in a Random Forest model.

摘要

In the last decade, the ease of online payment has opened up many new opportunities for e-commerce, lowering the geographical boundaries for retail. While e-commerce is still gaining popularity, it is also the playground of fraudsters who try to misuse the transparency of online purchases and the transfer of credit card records. This paper proposes APATE, a novel approach to detect fraudulent credit card transactions conducted in online stores. Our approach combines (1) intrinsic features derived from the characteristics of incoming transactions and the customer spending history using the fundamentals of RFM (Recency–Frequency–Monetary); and (2) network-based features by exploiting the network of credit card holders and merchants and deriving a time-dependent suspiciousness score for each network object. Our results show that both intrinsic and network-based features are two strongly intertwined sides of the same picture. The combination of these two types of features leads to the best performing models which reach AUC-scores higher than 0.98.

论文关键词:Credit card transaction fraud,Network analysis,Bipartite graphs,Supervised learning

论文评审过程:Received 11 September 2014, Revised 11 February 2015, Accepted 30 April 2015, Available online 8 May 2015, Version of Record 22 May 2015.

论文官网地址:https://doi.org/10.1016/j.dss.2015.04.013