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首页> 外文期刊>ACM journal of data and information quality >Content-Aware Trust Propagation Toward Online Review Spam Detection
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Content-Aware Trust Propagation Toward Online Review Spam Detection

机译:内容感知信任传播在线审查垃圾邮件检测

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摘要

With the increasing popularity of online review systems, a large volume of user-generated content becomes available to help people make reasonable judgments about the quality of services and products from unknown providers. However, these platforms are frequently abused since fraudulent information can be freely inserted by potentially malicious users without validation. Consequently, online review systems become targets of individual and professional spammers, who insert deceptive reviews by manipulating the rating and/or the content of the reviews. In this work, we propose a review spamming detection scheme based on the deviation between the aspect-specific opinions extracted from individual reviews and the aggregated opinions on the corresponding aspects. In particular, we model the influence on the trustworthiness of the user due to his opinion deviations from the majority in the form of a deviation-based penalty, and integrate this penalty into a three-layer trust propagation framework to iteratively compute the trust scores for users, reviews, and review targets, respectively. The trust scores are effective indicators of spammers, since they reflect the overall deviation of a user from the aggregated aspect-specific opinions across all targets and all aspects. Experiments on the dataset collected from Yelp.com show that the proposed detection scheme based on aspect-specific content-aware trust propagation is able to measure users' trustworthiness based on opinions expressed in reviews.
机译:随着在线审查系统的普及,大量的用户生成的内容可用,以帮助人们对来自未知提供商的服务质量和产品的质量进行合理判断。但是,由于欺诈信息可以通过潜在的恶意用户可以在没有验证的情况下自由插入,因此这些平台经常被滥用。因此,在线审查系统成为个人和专业垃圾邮件发送者的目标,通过操纵评级和/或评论的内容来插入欺骗性评审。在这项工作中,我们提出了一种审查垃圾邮件检测方案,基于各个审查提取的方面特定意见与对应方面的汇总意见之间的偏差。特别地,我们模拟了对用户的可信度的影响,因为他的意见偏差是基于偏差的惩罚的形式,并将这种惩罚集成到三层信任传播框架中,以迭代地计算信任分数用户,评论和评论目标分别。信托分数是垃圾邮件发送者的有效指标,因为它们反映了用户从所有目标和各个方面的聚合方面的特定意见的总体偏差。来自Yelp.com收集的数据集的实验表明,基于方面特定的内容感知信任传播的提出的检测方案能够根据评论中表达的意见来衡量用户的可信度。

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