2022
DOI: 10.12688/f1000research.73359.1
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Mitigating unbalanced and overlapped classes in credit card fraud data with enhanced stacking classifiers system

Abstract: Background: Credit cards remain the preferred payment method by many people nowadays. If not handled carefully, people may face severe consequences such as credit card frauds. Credit card frauds involve the illegal use of credit cards without the owner’s knowledge. Credit card fraud was estimated to exceed a $35.5 billion loss globally in 2020, and results in direct or indirect financial loss to the owners. Hence, a detection system capable of analysing and identifying fraudulent behaviour in credit card activ… Show more

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References 22 publications
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