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Detecting Fake Reviews Based on Review-Rating Consistency and Multi-dimensional Time Series

机译:根据审查评级一致性和多维时间序列检测假审查

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Online reviews can help people get more information about stores and products. The potential customers tend to make decisions according to them. However, driven by profit, spammers post fake reviews to mislead the customers by promoting or demoting target store. Previous studies mainly utilize the rating as an indicator for detection. However, these studies ignore an important problem that the rating cannot represent the sentiment accurately. In this paper, we propose a method of identifying fake reviews based on rating- review consistency and multi-dimensional time series. We first incorporate the sentiment analysis techniques into fake review detection. Then, we further discuss the relationship between ratings and fake reviews. In the end, this paper establishes an effective time series to detect fake reviews. Experimental results show that our proposed methods have good detection result and outperform state-of-art methods.
机译:在线评论可以帮助人们获取有关商店和产品的更多信息。潜在客户倾向于根据他们做出决定。然而,由利润驱动,垃圾邮件发送者发布假审查通过促进或降级目标商店来误导客户。以前的研究主要利用额定值作为检测的指示。然而,这些研究忽略了评级不能准确代表情绪的重要问题。在本文中,我们提出了一种根据评级 - 审查一致性和多维时间序列识别伪评的方法。我们首先将情绪分析技术纳入假审查检测。然后,我们进一步讨论了评级与假审查之间的关系。最后,本文建立了检测虚假评论的有效时间序列。实验结果表明,我们所提出的方法具有良好的检测结果和优异的最先进方法。

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