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Merging Multiple Criteria to Identify Suspicious Reviews

机译:合并多个条件以识别可疑评论

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Assessing the trustworthiness of reviews is a key issue for the main-tainers of opinion sites such as TripAdvisor, given the rewards that can be derived from posting false or biased reviews. In this paper we present a number of criteria that might be indicative of suspicious reviews and evaluate alternative methods for integrating these criteria to produce a unified 'suspiciousness' ranking. The criteria derive from characteristics of the network of reviewers and also from analysis of the content and impact of reviews and ratings. The integration methods that are evaluated are singular value decomposition and the unsupervised hedge algorithm. These alternatives are evaluated in a user study on TripAdvisor reviews, where volunteers were asked to rate the suspiciousness of reviews that have been highlighted by the criteria.
机译:考虑到发表虚假或有偏见的评论可能会带来回报,对于像TripAdvisor这样的舆论网站的主要评价者来说,评估评论的可信度是一个关键问题。在本文中,我们提出了许多可能指示可疑审查的标准,并评估了将这些标准整合以产生统一的“可疑性”等级的替代方法。该标准源自评论者网络的特征,也源自对评论和评级的内容以及影响的分析。评估的积分方法是奇异值分解和无监督对冲算法。在关于TripAdvisor评论的用户研究中评估了这些替代方案,要求志愿者评估标准中强调的评论的可疑性。

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