Litcius/Paper detail

Fraud detection with natural language processing

Petros Boulieris, John Pavlopoulos, Alexandros Xenos, Vasilis Vassalos

2023Machine Learning50 citationsDOIOpen Access PDF

Abstract

Abstract Automated fraud detection can assist organisations to safeguard user accounts, a task that is very challenging due to the great sparsity of known fraud transactions. Many approaches in the literature focus on credit card fraud and ignore the growing field of online banking. However, there is a lack of publicly available data for both. The lack of publicly available data hinders the progress of the field and limits the investigation of potential solutions. With this work, we: (a) introduce FraudNLP , the first anonymised, publicly available dataset for online fraud detection, (b) benchmark machine and deep learning methods with multiple evaluation measures, (c) argue that online actions do follow rules similar to natural language and hence can be approached successfully by natural language processing methods.

Topics & Concepts

Computer scienceField (mathematics)Task (project management)Benchmark (surveying)Credit card fraudArtificial intelligenceData scienceNatural languageFocus (optics)Credit cardMachine learningSafeguardNatural language processingComputer securityWorld Wide WebBusinessEngineeringMathematicsOpticsPaymentPhysicsInternational tradeGeodesySystems engineeringGeographyPure mathematicsImbalanced Data Classification TechniquesCybercrime and Law Enforcement StudiesCrime, Illicit Activities, and Governance