VoteTrust:利用好友邀请图来抵御社交网络攻击

Zhi Yang, Jilong Xue, Xiaoyong Yang, Xiao Wang, Yafei Dai
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引用次数: 38

摘要

在线社交网络(OSNs)目前面临着一个重大挑战,即虚假用户账户(Sybils)的存在和不断创建,这些账户可以通过引入垃圾邮件和操纵在线评级来破坏社交网络服务的质量。最近,在研究社区中,利用社会网络结构来检测Sybils的研究非常令人兴奋。然而,它们依赖于一个假设,即sybil形成了一个紧密结合的社区,这在实际的osn中可能不成立。在本文中,我们提出了VoteTrust,这是一个Sybil检测系统,它进一步利用了发起和接受链接的用户交互。VoteTrust使用基于信任的投票分配和全局投票聚合技术来评估用户是Sybil的概率。通过对真实社交网络(人人网)的详细评估,我们展示了VoteTrust通过发送大量未经请求的朋友请求和与许多正常用户成为朋友来防止Sybil收集受害者(例如垃圾邮件受众)的能力,并证明它在Sybil检测方面可以显着优于传统排名系统(如TrustRank或BadRank)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
VoteTrust: Leveraging friend invitation graph to defend against social network Sybils
Online social networks (OSNs) currently face a significant challenge by the existence and continuous creation of fake user accounts (Sybils), which can undermine the quality of social network service by introducing spam and manipulating online rating. Recently, there has been much excitement in the research community over exploiting social network structure to detect Sybils. However, they rely on the assumption that Sybils form a tight-knit community, which may not hold in real OSNs. In this paper, we present VoteTrust, a Sybil detection system that further leverages user interactions of initiating and accepting links. VoteTrust uses the techniques of trust-based vote assignment and global vote aggregation to evaluate the probability that the user is a Sybil. Using detailed evaluation on real social network (Renren), we show VoteTrust's ability to prevent Sybils gathering victims (e.g., spam audience) by sending a large amount of unsolicited friend requests and befriending many normal users, and demonstrate it can significantly outperform traditional ranking systems (such as TrustRank or BadRank) in Sybil detection.
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