基于Smote & AdaBoost机器学习的现代信用卡网络盗用审查

Shubhangi Dc, Basawaraj Gadgay, Amtul Fatima Heeba, M. A. Waheed
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引用次数: 0

摘要

信用卡盗用案件时有发生,造成巨额资金损失。由于现代数字化和现代通信高速公路,信用卡盗用现象急剧增加。建立保障信用卡交易安全的系统至关重要。利用欧洲信用卡持卡人的真实不平衡数据集,构建了基于ml的信用卡盗用检测模型。利用合成少数派过采样技术,对数据集进行重采样,解决了类不平衡问题。该框架采用了以下算法:支持向量机、逻辑回归、随机森林、极端梯度增强、决策树。这些机器学习方法与自适应Boost技术相结合,以提高分类质量。采用正确率、查全率、查准率、马修斯相关系数和曲线下面积(AUC)对这些风格进行评估。实验结果表明,AdaBoost提高了所提供方法的性能。此外,我们建议在交易完成后,卡片详细信息应该从商家网关中消失或删除。如果遇到没有在线事务处理(OTP)的支付,则应将其标记为盗用事务。如果持卡人以外的第三者利用信用卡支付租金的方式,将钱非法转移到各自的银行账户,则应举报为挪用公款。三次交租金额不得超过25000元。如果在交易过程中显示FEMA(外汇管理法,1999年)选项,则应告知用户不允许购买彩票、外汇交易、回调服务、打掉期、赌博交易、禁止期刊等服务,并自动拒绝交易。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Scrutiny For Cybernated Embezzlement Of Credit Card In Modern Era Based On Machine Learning Using Smote & AdaBoost
Credit card embezzlement take place often and result in the huge capital loss. Credit card embezzlement has ramped up dramatically as a result of modern digitalization and modern communication expressways. It is vital to build systems to assure the security of credit card transaction. Using real world imbalanced dataset induced from European credit cardholder, we constructeda ml based model for detecting credit card embezzlement. Utilizing the synthetic minority over sampling technique, we resampled the data set to solve the class imbalance issue. The following algorithms were adopted to determine this framework: support vector machine, logistic regression, random forest, extreme gradient boosting, decision tree. These machine learning methods were integrated with adaptive Boost technique to foster classification quality. The styles were assessed using accuracy, recall, precision, Matthews correlation coefficient, and area under the curve (AUC). The results of the experiments show that AdaBoost increases the performance of the offered approaches. Furthermore, we proposed that the card details should vanish or be removed from the merchant gateway after the completion of the transaction. If the payment without online transaction processing (OTP) is encountered, then it should be flagged as an embezzled transaction. If a third party other than then cardholder uses the credit card for pay rent option to transfer the amount to a respective bank account illegally, then it should be reported as embezzlement. Thee pay rent amount should not exceed 25000. If the FEMA(Foreign Exchange Management (Act, 19999) options display during a transaction, the user should be informed that services including purchasing lottery tickets, forex trading, call back services, beating swap stacks, gambling transactions, and forbidden periodicals are not allowed and the transaction should be declined automatically.
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