电子商务交易中欺诈检测和预防的机器学习管道

Resham Jhangiani, Doina Bein, Abhishek Verma
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引用次数: 6

摘要

欺诈已成为电子商务中的一个主要问题,人们正在投入大量资源来识别和预防欺诈。目前的欺诈检测和预防系统只能防止一小部分已处理的欺诈交易,而这些交易仍造成数十亿美元的损失。由于网上交易预计在未来一年将大幅增加,因此迫切需要更好地检测和预防欺诈。我们提出了一个数据驱动模型,使用大数据上的机器学习算法来预测交易是欺诈还是合法的概率。该模型在历史电子商务信用卡交易数据上进行训练,以预测客户未来任何交易被欺诈的可能性。实现了随机森林、支持向量机、梯度增强等监督机器学习算法及其组合,并比较了它们的性能。同时考虑了类不平衡问题,在分类器上训练模型之前进行了过采样和数据预处理技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning Pipeline for Fraud Detection and Prevention in E-Commerce Transactions
Fraud has become a major problem in e-commerce and a lot of resources are being invested to recognize and prevent it. Present fraud detection and prevention systems are designed to prevent only a small fraction of fraudulent transactions processed, which still costs billions of dollars in loss. There is an urgent need for better fraud detection and prevention as the online transactions are estimated to increase substantially in the coming year. We propose a data driven model using machine learning algorithms on big data to predict the probability of a transaction being fraudulent or legitimate. The model was trained on historical e-commerce credit card transaction data to predict the probability of any future transaction by the customer being fraudulent. Supervised machine learning algorithms like Random Forest, Support Vector Machine, Gradient Boost and combinations of these are implemented and their performance are compared. While at the same time the problem of class imbalance is taken into consideration and techniques of oversampling and data pre-processing are performed before the model is trained on a classifier.
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