Due to the huge commercial interests behind online reviews, a tremendousamount of spammers manufacture spam reviews for product reputation manipulation. To further enhance the influence of spam reviews, spammers often collaboratively post spam reviewers within a short period of time, the activities of whom are called collective opinion spam campaign. As the goals and members of the spam campaign activities change frequently, and some spammers also imitate normal purchases to conceal identity, which makes the spammer detection challenging. In this paper, we propose an unsupervised network embedding-based approach to jointly exploiting different types of relations, e.g., direct common behaviour relation and indirect co-reviewed relation to effectively represent the relevances of users for detecting the collective opinion spammers. The average improvements of our method over the state-of-the-art solutions on dataset AmazonCn and YelpHotel are [14.09%,12.04%] and [16.25%,12.78%] in terms of AP and AUC, respectively.
翻译:由于在线审查背后的巨大商业利益,大量的垃圾邮件制造垃圾邮件审查是为了操纵产品名声。为了进一步加强垃圾邮件审查的影响,垃圾邮件审查者往往在很短的时间内协作发表垃圾邮件审查者,他们的活动被称为集体垃圾邮件运动。由于垃圾邮件宣传活动的目标和成员经常变化,有些垃圾邮件还模仿通常的购买来隐瞒身份,这使得垃圾邮件探测具有挑战性。在本文中,我们建议采用不受监督的嵌入网络方法,联合利用不同类型的关系,例如直接的共同行为关系和间接共同审查的关系,以有效代表用户在发现集体垃圾邮件方面的关联性。我们对于数据集的亚马逊中心和叶尔普霍泰尔公司最新解决方案的平均改进分别是[14.09%,12.04 %]和[16.25%,12.78%]。