基于机器学习技术的信用卡欺诈检测与识别

Omega John Unogwu, None Youssef Filali
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引用次数: 2

摘要

随着时间的推移,欺诈性互联网交易对个人和组织都造成了相当大的伤害和损失。尖端技术的发展和全球连接加剧了在线欺诈案件的增加。为了弥补这些损失,必须开发强大的欺诈检测系统。机器学习和统计方法是正确识别欺诈交易的关键组成部分。然而,实现欺诈检测模型会带来一些挑战,比如有限的数据可用性、数据敏感性和不平衡的类分布。记录的机密性增加了在该领域绘制推断和构建改进模型的复杂性。本研究探索了多种算法,适用于使用信用卡欺诈数据集将交易分类为真实或欺诈。考虑到数据集的极度不平衡性质,我们使用SMOTE方法进行过采样,以减轻类分布的不平衡。此外,进行特征选择,并将数据集分为训练数据和测试数据。实验采用NB算法、RF算法和MLP算法,在信用卡欺诈检测中均表现出较高的准确率。与其他方法相比,MLP方法的准确率达到99.95%
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fraud Detection and Identification in Credit Card Based on Machine Learning Techniques
Fraudulent internet transactions have caused considerable harm and losses for both people and organizations over time. The growth of cutting-edge technology and worldwide connectivity has exacerbated the rise in online fraud instances. To offset these losses, robust fraud detection systems must be developed. ML and statistical approaches are critical components in properly recognizing fraudulent transactions. However, implementing fraud detection models presents challenges such as limited data availability, data sensitivity, and imbalanced class distributions. The confidentiality of records adds complexity to drawing inferences and constructing improved models in this domain. This research explores multiple algorithms suitable for classifying transactions as either genuine or fraudulent using the Credit Card Fraud dataset. Given the extremely unbalanced nature of the dataset, the SMOTE approach was used for oversampling to alleviate the class distribution imbalance. In addition, feature selection was carried out, and the dataset was divided into training and test data. The experiments utilized NB, RF, and MLP algorithms, all of which demonstrated high accuracy in detecting credit card fraud. MLP method achieved 99.95% accuracy as compared to other methods
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