利用社交拒绝打击朋友垃圾邮件

Q. Cao, Michael Sirivianos, Xiaowei Yang, Kamesh Munagala
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引用次数: 19

摘要

在线社交网络(OSNs)中不受欢迎的朋友请求,也被称为朋友垃圾邮件,是最具规避性的恶意活动之一。朋友垃圾邮件会导致与用户之间的社交关系不对应的OSN链接,从而污染底层的社交图谱,而这些社交图谱是构建OSN核心功能的基础,包括社交搜索引擎、广告定位、OSN防御系统等。为了有效地检测充当朋友垃圾邮件发送者的虚假账户,我们提出了一个名为Rejecto的系统。它源于对osn中社交拒绝的观察,即即使是维护良好的假账户,其好友请求也不可避免地会被拒绝或被合法用户举报。我们的关键见解是将社交图划分为两个区域,这样从一个区域到另一个区域的朋友请求的总接受率就会最小化。这种设计可以可靠地检测到包含朋友垃圾邮件发送者的区域,而不考虑垃圾邮件发送者之间的请求串通。与此同时,它还能抵御其他战略操纵。为了有效地获得图割,我们扩展了Kernighan-Lin启发式算法,并使用它来迭代检测发送朋友垃圾信息的虚假账户。我们的评估表明,Rejecto可以在广泛的场景下识别朋友垃圾邮件发送者,并且在计算上是实用的。
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Combating Friend Spam Using Social Rejections
Unwanted friend requests in online social networks (OSNs), also known as friend spam, are among the most evasive malicious activities. Friend spam can result in OSN links that do not correspond to social relationship among users, thus pollute the underlying social graph upon which core OSN functionalities are built, including social search engine, ad targeting, and OSN defense systems. To effectively detect the fake accounts that act as friend spammers, we propose a system called Rejecto. It stems from the observation on social rejections in OSNs, i.e., Even well-maintained fake accounts inevitably have their friend requests rejected or they are reported by legitimate users. Our key insight is to partition the social graph into two regions such that the aggregate acceptance rate of friend requests from one region to the other is minimized. This design leads to reliable detection of a region that comprises friend spammers, regardless of the request collusion among the spammers. Meanwhile, it is resilient to other strategic manipulations. To efficiently obtain the graph cut, we extend the Kernighan-Lin heuristic and use it to iteratively detect the fake accounts that send out friend spam. Our evaluation shows that Rejecto can discern friend spammers under a broad range of scenarios and that it is computationally practical.
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