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Spotting Fake Reviewer Groups in Consumer Reviews

机译:在消费者评论中发现虚假评论者组

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摘要

Opinionated social media such as product reviews are now widely used by individuals and organizations for their decision making. However, due to the reason of profit or fame, people try to game the system by opinion spamming (e.g., writing fake reviews) to promote or demote some target products. For reviews to reflect genuine user experiences and opinions, such spam reviews should be detected. Prior works on opinion spam focused on detecting fake reviews and individual fake reviewers. However, a fake reviewer group (a group of reviewers who work collaboratively to write fake reviews) is even more damaging as they can take total control of the sentiment on the target product due to its size. This paper studies spam detection in the collaborative setting, i.e., to discover fake reviewer groups. The proposed method first uses a frequent itemset mining method to find a set of candidate groups. It then uses several behavioral models derived from the collusion phenomenon among fake reviewers and relation models based on the relationships among groups, individual reviewers, and products they reviewed to detect fake reviewer groups. Additionally, we also built a labeled dataset of fake reviewer groups. Although labeling individual fake reviews and reviewers is very hard, to our surprise labeling fake reviewer groups is much easier. We also note that the proposed technique departs from the traditional supervised learning approach for spam detection because of the inherent nature of our problem which makes the classic supervised learning approach less effective. Experimental results show that the proposed method outperforms multiple strong baselines including the state-of-the-art supervised classification, regression, and learning to rank algorithms.
机译:诸如产品评论之类的自以为是的社交媒体现在已被个人和组织广泛地用于决策。但是,由于获利或成名的原因,人们试图通过垃圾评论(例如撰写虚假评论)来博弈该系统,以促销或降级某些目标产品。为了使评论反映真实的用户体验和意见,应该检测到此类垃圾邮件评论。先前关于意见垃圾邮件的工作重点是检测虚假评论和单个虚假评论者。但是,假冒审阅者组(一组协作撰写假审稿的审阅者)更具破坏性,因为由于尺寸原因,他们可以完全控制目标产品的情绪。本文研究了协作环境下的垃圾邮件检测,即发现伪造的审阅者组。所提出的方法首先使用频繁项集挖掘方法来找到一组候选组。然后,它使用从伪造审阅者之间的合谋现象和基于模型,个人审阅者和他们审阅的产品之间的关系的关系模型得出的几种行为模型来检测伪造审阅者组。此外,我们还构建了带有标签的假评论者组数据集。尽管标记单个假评论和审阅者非常困难,但令人惊讶的是,标记假评论者组要容易得多。我们还注意到,由于我们问题的固有性质,所提出的技术与传统的监督学习的方法有别于垃圾邮件检测,这使得经典的监督学习的方法效率较低。实验结果表明,该方法优于多个强大的基线,包括最新的监督分类,回归和学习排序算法。

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