SocialClymene: A negative reputation system for covert botnet detection in social networks

Mansoureh Ghanadi, M. Abadi
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引用次数: 6

Abstract

Online social networks, or simply social networks, are one of the most popular services on the Internet, providing a platform for users to interact, communicate, and collaborate with others. With this in mind, they have been able to attract millions of active users. However, they are being increasingly threatened by so-called covert social network botnets, a new generation of botnets that exploit social networks to establish covert command and control channels. Stego-botnets are typical covert social network botnets that use images shared on a social network to send the botmaster's commands and receive the information stolen from infected users. In this paper, we present SocialClymene, a PageRank-based negative reputation system to detect stego-botnets. At the heart of SocialClymene lies a negative reputation subsystem that analyzes images shared by social network users and calculates a negative reputation score for every user based on the user's history of participation in suspicious group activities. More precisely, the negative reputation score of every user is calculated by the sum of its incoming normalized suspicious values weighted by the negative reputation scores of its neighbors in a suspicious group activity graph. Our experimental results have shown that SocialClymene can efficiently detect stego-botnets with a high detection rate and an acceptable low false alarm rate.
SocialClymene:一个用于社交网络中隐蔽僵尸网络检测的负面声誉系统
在线社交网络,或简称社交网络,是互联网上最流行的服务之一,为用户提供了一个与他人互动、交流和协作的平台。考虑到这一点,他们已经能够吸引数百万活跃用户。然而,他们正日益受到所谓的隐蔽社交网络僵尸网络的威胁,这是一种利用社交网络建立隐蔽指挥和控制渠道的新一代僵尸网络。隐藏僵尸网络是典型的隐蔽社交网络僵尸网络,它使用社交网络上共享的图像来发送僵尸管理员的命令,并接收从受感染用户那里窃取的信息。在本文中,我们提出了SocialClymene,一个基于pagerank的负面声誉系统来检测隐写僵尸网络。SocialClymene的核心是一个负面声誉子系统,它分析社交网络用户分享的图像,并根据用户参与可疑群体活动的历史,计算每个用户的负面声誉评分。更准确地说,每个用户的负面声誉分数是通过可疑群体活动图中其邻居的负面声誉分数加权其传入的标准化可疑值的总和来计算的。实验结果表明,SocialClymene能够有效检测隐写僵尸网络,具有较高的检测率和可接受的低虚警率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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