使用机器学习算法预测移动货币交易欺诈

Applied AI letters Pub Date : 2023-07-12 DOI:10.1002/ail2.85
Mark E. Lokanan
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引用次数: 0

摘要

使用移动货币便利跨境支付的便利性对打击洗钱和恐怖主义融资的执法部门构成了全球性威胁。本文旨在利用机器学习分类器来预测移动转账中被标记为欺诈的交易。本研究的数据是从模拟一个众所周知的移动转账欺诈方案的实时交易中获得的。采用Logistic回归作为基线模型,并与集合模型和梯度下降模型进行了比较。结果表明,逻辑回归模型虽然表现不如其他模型,但仍具有合理的性能。在所有度量中,随机森林分类器表现出优异的性能。在移动汇款中,汇款金额成为预测洗钱交易的首要特征。这些发现表明,需要进一步研究来增强逻辑回归模型,并应探索随机森林分类器作为执法和金融机构检测移动汇款中洗钱活动的潜在工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Predicting mobile money transaction fraud using machine learning algorithms

The ease with which mobile money is used to facilitate cross-border payments presents a global threat to law enforcement in the fight against money laundering and terrorist financing. This paper aims to utilize machine learning classifiers to predict transactions flagged as a fraud in mobile money transfers. The data for this study were obtained from real-time transactions that simulate a well-known mobile transfer fraud scheme. Logistic regression is used as the baseline model and is compared with ensemble and gradient descent models. The results indicate that the logistic regression model still showed reasonable performance while not performing as well as the other models. Among all the measures, the random forest classifier exhibited outstanding performance. The amount of money transferred emerged as the top feature for predicting money laundering transactions in mobile money transfers. These findings suggest that further research is needed to enhance the logistic regression model, and the random forest classifier should be explored as a potential tool for law enforcement and financial institutions to detect money laundering activities in mobile money transfers.

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