利用KNN相关机器学习方法的信用卡欺诈检测新方法

Ananya Singhai, S. Aanjankumar, S. Poonkuntran
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引用次数: 0

摘要

信用卡为网上交易提供了方便和高效的选择;然而,越来越多的人使用它们导致了信用卡欺诈的增加,给持卡人和金融机构造成了重大的经济损失。本研究旨在通过考虑各种标准来识别此类欺诈,包括公共数据的可用性,高级别差异统计,欺诈过程的变化以及高虚警率。随着电子支付的发展,诈骗分子采取各种手段,如伪造电子邮件和数据泄露,在网上交易中窃取资金。虽然这些方法不准确,但必须使用尖端的机器学习算法来减少欺诈损失。因此,本研究的主要重点是信用卡欺诈检测机器学习算法的最新进展。该研究论文旨在研究机器学习算法在区分真假在线交易中的应用。在本文中,KNN与其他检测信用卡欺诈的机器学习方法进行了比较。该方法的准确率为99.95%,精密度为97.2%,召回率为85.71%,f1分数为90.3%。
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A Novel Methodology for Credit Card Fraud Detection using KNN Dependent Machine Learning Methodology
Credit cards offer a convenient and efficient option for online transactions; however, their increasing use has led to a rise in credit card fraud, resulting in significant financial losses for both cardholders and financial institutions. This research aims to identify such frauds by considering various criteria, including the availability of public data, high-class disparity statistics, changes in fraudulent processes, and high false alarm rates. With the growth of e-payments, fraudsters have resorted to various tactics such as fake emails and data breaches to steal money during online transactions. Although these methods are inaccurate, cutting-edge machine-learning algorithms must be used to reduce fraud losses. Therefore, this study's primary focus is on the recent advancements in machine learning algorithms for credit card fraud detection. The research paper aims to investigate the application of machine learning algorithms in distinguishing between genuine and fake online transactions. In the paper, KNN is compared to other machine-learning methods for detecting credit card fraud. The proposed approach achieved an accuracy of 99.95%, a precision of 97.2%, a recall of 85.71%, and an F1-score of 90.3%.
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