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Using Exploratory Data Analysis for Fraud Elicitation through Supervised Learning

机译:通过监督学习使用探索性数据分析进行欺诈诱因

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摘要

Outlier detection is a relevant problem for many domains, among which for detection of fraudulent behavior. Exploratory Data Analysis techniques are known to be very useful for highlighting patterns and deviations in data through visual representations. Less explored is the feasibility of using them to build learning models for outlier detection, which can be applied automatically to classify data without human intervention. In this paper we propose a method that uses one Exploratory Data Analysis technique -- Andrews curves -- in order to produce a classifier, which we applied to a real dataset, extracted from an online auction site, obtaining positive results regarding elicitation of fraudulent behavior.
机译:离群检测是许多域的相关问题,其中包括欺诈行为的检测。众所周知,探索性数据分析技术对于通过视觉表示突出显示数据中的模式和偏差非常有用。较少探索的是使用它们来构建用于异常检测的学习模型的可行性,该模型可以自动应用于对数据进行分类,而无需人工干预。在本文中,我们提出了一种方法,该方法使用一种探索性数据分析技术(安德鲁斯曲线)来生成分类器,并将其应用于从在线拍卖网站中提取的真实数据集,从而获得有关欺诈行为诱因的积极结果。

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