REV2: Fraudulent User Prediction in Rating Platforms

Srijan Kumar, Bryan Hooi, Disha Makhija, Mohit Kumar, C. Faloutsos, V. S. Subrahmanian
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引用次数: 283

Abstract

Rating platforms enable large-scale collection of user opinion about items(e.g., products or other users). However, untrustworthy users give fraudulent ratings for excessive monetary gains. In this paper, we present REV2, a system to identify such fraudulent users. We propose three interdependent intrinsic quality metrics---fairness of a user, reliability of a rating and goodness of a product. The fairness and reliability quantify the trustworthiness of a user and rating, respectively, and goodness quantifies the quality of a product. Intuitively, a user is fair if it provides reliable scores that are close to the goodness of products. We propose six axioms to establish the interdependency between the scores, and then, formulate a mutually recursive definition that satisfies these axioms. We extend the formulation to address cold start problem and incorporate behavior properties. We develop the REV2 algorithm to calculate these intrinsic quality scores for all users, ratings, and products. We show that this algorithm is guaranteed to converge and has linear time complexity. By conducting extensive experiments on five rating datasets, we show that REV2 outperforms nine existing algorithms in detecting fair and unfair users. We reported the 150 most unfair users in the Flipkart network to their review fraud investigators, and 127 users were identified as being fraudulent(84.6% accuracy). The REV2 algorithm is being deployed at Flipkart.
REV2:评级平台的虚假用户预测
评分平台可以大规模收集用户对物品的意见(例如:、产品或其他用户)。然而,不值得信任的用户会为了获得过多的金钱收益而给出虚假评级。在本文中,我们提出了REV2,一个识别此类欺诈用户的系统。我们提出了三个相互依存的内在质量指标——用户的公平性、评级的可靠性和产品的优良性。公平性和可靠性分别量化了用户的可信度和评级,而良度量化了产品的质量。从直觉上讲,如果用户提供的可靠分数接近于产品的优点,那么用户就是公平的。我们提出了六个公理来建立分数之间的相互依赖关系,然后,制定了一个满足这些公理的相互递归定义。我们扩展了该公式来解决冷启动问题,并纳入了行为特性。我们开发了REV2算法来计算所有用户、评级和产品的这些内在质量分数。结果表明,该算法具有一定的收敛性和线性时间复杂度。通过在五个评级数据集上进行广泛的实验,我们表明REV2在检测公平和不公平用户方面优于现有的九种算法。我们将Flipkart网络中150个最不公平的用户报告给了他们的评论欺诈调查人员,127个用户被确定为欺诈(准确率为84.6%)。Flipkart正在部署REV2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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