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Fraud Detection in Credit Card Data using Unsupervised Machine Learning Based Scheme

Arun Kumar, Rajendra Kumar Dwivedi

20202020 International Conference on Electronics and Sustainable Communication Systems (ICESC)71 citationsDOI

Abstract

Development of communication technologies and e-commerce has made the credit card as the most common technique of payment for both online and regular purchases. So, security in this system is highly expected to prevent fraud transactions. Fraud transactions in credit card data transaction are increasing each year. In this direction, researchers are also trying the novel techniques to detect and prevent such frauds. However, there is always a need of some techniques that should precisely and efficiently detect these frauds. This paper proposes a scheme for detecting frauds in credit card data which uses a Neural Network (NN) based unsupervised learning technique. Proposed method outperforms the existing approaches of Auto Encoder (AE), Local Outlier Factor (LOF), Isolation Forest (IF) and K-Means clustering. Proposed NN based fraud detection method performs with 99.87% accuracy whereas existing methods AE, IF, LOF and K Means gives 97%, 98%, 98% and 99.75% accuracy respectively.

Topics & Concepts

Credit cardCredit card fraudComputer scienceDatabase transactionScheme (mathematics)Cluster analysisAnomaly detectionAutoencoderData miningUnsupervised learningPaymentArtificial intelligenceOutlierMachine learningArtificial neural networkDatabaseMathematical analysisMathematicsWorld Wide WebImbalanced Data Classification TechniquesVehicle License Plate RecognitionArtificial Intelligence in Healthcare
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