信用卡欺诈检测的监督机器学习算法:比较

Samidha Khatri, Aishwarya Arora, A. Agrawal
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引用次数: 54

摘要

在今天的经济情况下,信用卡的使用已经变得非常普遍。这些卡允许用户支付大笔的钱,而不需要携带大量的现金。他们彻底改变了无现金支付的方式,让买家可以方便地进行任何形式的支付。这种电子支付方式非常有用,但也有其自身的风险。随着用户数量的增加,信用卡诈骗也在以类似的速度增长。特定个人的信用卡信息可能被非法收集,并可能被用于欺诈交易。一些机器学习算法可以用来收集数据来解决这个问题。本文介绍了一些已建立的监督学习算法的比较,以区分真实交易和欺诈交易。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Supervised Machine Learning Algorithms for Credit Card Fraud Detection: A Comparison
In today’s economic scenario, credit card use has become extremely commonplace. These cards allow the user to make payments of large sums of money without the need to carry large sums of cash. They have revolutionized the way of making cashless payments and made making any sort of payments convenient for the buyer. This electronic form of payment is extremely useful but comes with its own set of risks. With the increasing number of users, credit card frauds are also increasing at a similar pace. The credit card information of a particular individual can be collected illegally and can be used for fraudulent transactions. Some Machine Learning Algorithms can be applied to collect data to tackle this problem. This paper presents a comparison of some established supervised learning algorithms to differentiate between genuine and fraudulent transactions.
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