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Feature engineering strategies for credit card fraud detection
Affiliation:1. Department of Decision Sciences and Information Management, KU Leuven, Naamsestraat 69, B-3000 Leuven, Belgium;2. Departamento de Ingeniería Industrial, Universidad de Talca, Curicó, Chile;3. Fraud Risk Management Analytics, Worldline, Brussels, Belgium;4. Department of Computer Science, Rutgers University, Piscataway, NJ, USA;5. Department of Computer Science, Stony Brook University, Stony Brook, NY, USA;6. School of Management, University of Southampton, Southampton, United Kingdom;1. Faculty of Engineering of the University of Porto, Rua Dr. Roberto Frias, Porto 4200-465, Portugal;2. INESC TEC, Rua Dr. Roberto Frias, Porto 4200-465, Portugal;3. Mathematical Institute, University of Oxford, Andrew Wiles Building, Radcliffe Observatory Quarter, Woodstock Rd, Oxford OX2 6GG, United Kingdom
Abstract:Every year billions of Euros are lost worldwide due to credit card fraud. Thus, forcing financial institutions to continuously improve their fraud detection systems. In recent years, several studies have proposed the use of machine learning and data mining techniques to address this problem. However, most studies used some sort of misclassification measure to evaluate the different solutions, and do not take into account the actual financial costs associated with the fraud detection process. Moreover, when constructing a credit card fraud detection model, it is very important how to extract the right features from the transactional data. This is usually done by aggregating the transactions in order to observe the spending behavioral patterns of the customers. In this paper we expand the transaction aggregation strategy, and propose to create a new set of features based on analyzing the periodic behavior of the time of a transaction using the von Mises distribution. Then, using a real credit card fraud dataset provided by a large European card processing company, we compare state-of-the-art credit card fraud detection models, and evaluate how the different sets of features have an impact on the results. By including the proposed periodic features into the methods, the results show an average increase in savings of 13%.
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