Litcius/Paper detail

Credit Card Fraud Detection Using a New Hybrid Machine Learning Architecture

Esraa Faisal Malik, Khai Wah Khaw, Bahari Belaton, Wai Peng Wong, XinYing Chew

2022Mathematics120 citationsDOIOpen Access PDF

Abstract

The negative effect of financial crimes on financial institutions has grown dramatically over the years. To detect crimes such as credit card fraud, several single and hybrid machine learning approaches have been used. However, these approaches have significant limitations as no further investigation on different hybrid algorithms for a given dataset were studied. This research proposes and investigates seven hybrid machine learning models to detect fraudulent activities with a real word dataset. The developed hybrid models consisted of two phases, state-of-the-art machine learning algorithms were used first to detect credit card fraud, then, hybrid methods were constructed based on the best single algorithm from the first phase. Our findings indicated that the hybrid model Adaboost + LGBM is the champion model as it displayed the highest performance. Future studies should focus on studying different types of hybridization and algorithms in the credit card domain.

Topics & Concepts

Credit card fraudCredit cardAdaBoostComputer scienceMachine learningArtificial intelligenceChampionDomain (mathematical analysis)Focus (optics)Hybrid learningSupport vector machineMathematicsPolitical scienceOpticsWorld Wide WebMathematical analysisPhysicsLawPaymentImbalanced Data Classification TechniquesCybercrime and Law Enforcement StudiesFinancial Distress and Bankruptcy Prediction
Credit Card Fraud Detection Using a New Hybrid Machine Learning Architecture | Litcius