论文标题
在线产品评论中检测和表征极端主义审阅者小组
Detecting and Characterizing Extremist Reviewer Groups in Online Product Reviews
论文作者
论文摘要
在线市场经常以评论形式见证垃圾邮件。人们通常会通过撰写高度正面或负面评论来聘请特定品牌来促进或阻碍他们的特定品牌。这通常是在小组中集体完成的。尽管以前的一些研究试图识别和分析此类意见垃圾邮件群体,但几乎没有探索那些针对整个品牌的群体,而不仅仅是产品。 在本文中,我们收集了亚马逊产品评论网站的评论,并手动标记了一组923个候选审稿人组。这些小组是在品牌相似性上使用频繁的项目集提取的,如果用户相互审查了许多品牌(产品),则将它们聚集在一起。我们假设审阅者组的性质取决于(组,品牌)对的8个功能。我们开发了一个基于功能的监督模型,以将候选人群体归类为极端主义实体。我们运行多个分类器,以根据该组用户编写的评论对组进行分类,以确定该组是否显示了肢体的迹象。基于三层感知器的分类器原来是最好的分类器。我们进一步研究了此类群体的行为,以更好地了解品牌水平欺诈的动态。这些行为包括评级的一致性,审查情绪,经过验证的购买,审查日期和审核中获得的有益票数。令人惊讶的是,我们观察到有很多经过验证的审稿人表现出极端的情绪,这在进一步的调查中导致方法可以规避现有机制,以防止亚马逊上的非正式激励措施。
Online marketplaces often witness opinion spam in the form of reviews. People are often hired to target specific brands for promoting or impeding them by writing highly positive or negative reviews. This often is done collectively in groups. Although some previous studies attempted to identify and analyze such opinion spam groups, little has been explored to spot those groups who target a brand as a whole, instead of just products. In this paper, we collected reviews from the Amazon product review site and manually labelled a set of 923 candidate reviewer groups. The groups are extracted using frequent itemset mining over brand similarities such that users are clustered together if they have mutually reviewed (products of) a lot of brands. We hypothesize that the nature of the reviewer groups is dependent on 8 features specific to a (group, brand) pair. We develop a feature-based supervised model to classify candidate groups as extremist entities. We run multiple classifiers for the task of classifying a group based on the reviews written by the users of that group, to determine if the group shows signs of extremity. A 3-layer Perceptron based classifier turns out to be the best classifier. We further study the behaviours of such groups in detail to understand the dynamics of brand-level opinion fraud better. These behaviours include consistency in ratings, review sentiment, verified purchase, review dates and helpful votes received on reviews. Surprisingly, we observe that there are a lot of verified reviewers showing extreme sentiment, which on further investigation leads to ways to circumvent existing mechanisms in place to prevent unofficial incentives on Amazon.