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Collusive Opinion Fraud Detection in Online Reviews: A Probabilistic Modeling Approach

机译:在线评论中的共谋舆论欺诈检测:一种概率建模方法

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We address the collusive opinion fraud problem in online review portals, where groups of people work together to deliver deceptive reviews formanipulating the reputations of targeted items. Such collusive fraud is considered much harder to defend against, since the participants (or colluders) can evade detection by shaping their behaviors collectively so as not to appear suspicious. To alleviate this problem, countermeasures have been proposed that leverage the collective behaviors of colluders. The motivation stems from the observation that colluders typically act in a very synchronized way, as they are instructed by the same campaigns with common items to target and schedules to follow. However, the collective behaviors examined in existing solutions focus mostly on the external appearance of fraud campaigns, such as the campaign size and the size of the targeted item set. These signals may become ineffective once colluders have changed their behaviors collectively. Moreover, the detection algorithms used in existing approaches are designed to only make collusion inference on the input data; predictive models that can be deployed for detecting emerging fraud cannot be learned from the data. In this article, to complement existing studies on collusive opinion fraud characterization and detection, we explore more subtle behavioral trails in collusive fraud practice. In particular, a suite of homogeneity-based measures are proposed to capture the interrelationships among colluders within campaigns. Moreover, a novel statistical model is proposed to further characterize, recognize, and predict collusive fraud in online reviews. The proposed model is fully unsupervised and highly flexible to incorporate effective measures available for better modeling and prediction. Through experiments on two real-world datasets, we show that our method outperforms the state of the art in both characterization and detection abilities.
机译:我们在在线评论门户网站中解决共谋意见欺诈问题,在这些门户网站上,一群人一起提供欺骗性评论,以操纵目标商品的声誉。这样的共谋欺诈被认为很难防御,因为参与者(或共谋者)可以通过共同塑造自己的行为来逃避侦查,从而不会显得可疑。为了减轻这个问题,已经提出了利用共谋者集体行为的对策。动机源于这样的观察结果:共谋者通常以非常同步的方式行动,因为它们是由相同的活动指示的,共同目标是目标,时间表要遵循。但是,现有解决方案中检查的集体行为主要集中在欺诈活动的外观上,例如活动规模和目标项目集的规模。一旦共谋者共同改变了他们的行为,这些信号就可能失效。此外,现有方法中使用的检测算法被设计为仅对输入数据进行合谋推断;无法从数据中了解可用于检测新兴欺诈的预测模型。在本文中,为了补充关于共谋舆论欺诈特征和检测的现有研究,我们探索了共谋欺诈实践中更微妙的行为线索。特别是,提出了一套基于同质性的措施来捕获战役中共谋者之间的相互关系。此外,提出了一种新颖的统计模型,以进一步表征,识别和预测在线评论中的串谋欺诈行为。所提出的模型是完全不受监督的,并且具有高度的灵活性,可以结合有效的度量以进行更好的建模和预测。通过在两个真实世界的数据集上进行的实验,我们证明了我们的方法在表征和检测能力方面均优于最新技术。

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