Predicting Credit Card Transaction Fraud Using Machine Learning Algorithms

Gao, Jiaxin and Zhou, Zirui and Ai, Jiangshan and Xia, Bingxin and Coggeshall, Stephen (2019) Predicting Credit Card Transaction Fraud Using Machine Learning Algorithms. Journal of Intelligent Learning Systems and Applications, 11 (03). pp. 33-63. ISSN 2150-8402

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Abstract

Credit card fraud is a wide-ranging issue for financial institutions, involving theft and fraud committed using a payment card. In this paper, we explore the application of linear and nonlinear statistical modeling and machine learning models on real credit card transaction data. The models built are supervised fraud models that attempt to identify which transactions are most likely fraudulent. We discuss the processes of data exploration, data cleaning, variable creation, feature selection, model algorithms, and results. Five different supervised models are explored and compared including logistic regression, neural networks, random forest, boosted tree and support vector machines. The boosted tree model shows the best fraud detection result (FDR = 49.83%) for this particular data set. The resulting model can be utilized in a credit card fraud detection system. A similar model development process can be performed in related business domains such as insurance and telecommunications, to avoid or detect fraudulent activity.

Item Type: Article
Subjects: Middle East Library > Engineering
Depositing User: Unnamed user with email support@middle-eastlibrary.com
Date Deposited: 27 Jan 2023 07:45
Last Modified: 25 May 2024 09:18
URI: http://editor.openaccessbook.com/id/eprint/142

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