An Analysis of the Supervised Learning Approach for Online Fraud Detection

D. H. Reddy
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引用次数: 0

Abstract

Illegal online financial transactions are now more sophisticated and global in scope, which costs both parties—customers and businesses. For fraud prevention and detection in the online setting, many different strategies have been proposed. While all of these techniques aim to detect and stop fraudulent online transactions, they differ in terms of their features, advantages, and disadvantages. This study assesses the current fraud detection research in this area to detect the employed algorithms and assessing in accordance with predetermined standards. The systematic quantitative literature review methodology was used to assess the research studies in the subject of online fraud detection. A hierarchical typology is created based on the supervised learning methods in scientific articles and their properties. Therefore, by integrating three selection criteria—accuracy, coverage, and costs—our research presents the best methods for identifying fraud in a novel approach. Index Terms : Detection, Online fraud, Online transaction, Supervised Learning Algorithm.
在线欺诈检测的监督学习方法分析
非法的网上金融交易现在更加复杂和全球化,这让双方都付出了代价——客户和企业。对于在线环境中的欺诈预防和检测,已经提出了许多不同的策略。虽然所有这些技术都旨在检测和阻止欺诈性在线交易,但它们在功能、优点和缺点方面有所不同。本研究对目前该领域的欺诈检测研究进行了评估,以检测所采用的算法并按照预定的标准进行评估。采用系统的定量文献回顾方法对网上欺诈检测的研究进行评估。基于科学论文中的监督学习方法及其性质,建立了一种分层类型。因此,通过整合三个选择标准——准确性、覆盖率和成本——我们的研究以一种新颖的方式提出了识别欺诈的最佳方法。检索术语:检测,在线欺诈,在线交易,监督学习算法。
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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