Detecting social media mobile botnets using user activity correlation and artificial immune system

Reham Al-Dayil, M. H. Dahshan
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引用次数: 8

Abstract

With the rapidly growing development of cellular networks and powerful smartphones, botnets have invaded the mobile domain. Social media, like Twitter, Facebook, and YouTube have created a new communication channel for attackers. Recently, bot masters started to exploit social media for different malicious activity, such as sending spam, recruitment of new bots, and botnet command and control. In this paper we propose a detection technique for social mediabased mobile botnets using Twitter. The proposed method combines the correlation between tweeting and user activity, such as clicks or taps, and an Artificial Immune System detector, to detect tweets caused by bots and differentiate them from tweets generated by user or by user-approved applications. This detector creates a signature of the tweet and compares it with a dynamically updated signature library of bot behavior signatures. The proposed system has been fully implemented on Android platform and tested under several sets of generated tweets. The test results show that the proposed method has a very high accuracy in detecting bot tweets with about 95% detection ratio.
基于用户活动关联和人工免疫系统的社交媒体移动僵尸网络检测
随着蜂窝网络和智能手机的快速发展,僵尸网络已经侵入了移动领域。Twitter、Facebook和YouTube等社交媒体为攻击者创造了新的沟通渠道。最近,机器人主人开始利用社交媒体进行不同的恶意活动,例如发送垃圾邮件,招募新的机器人,以及僵尸网络命令和控制。在本文中,我们提出了一种基于Twitter的基于社交媒体的移动僵尸网络检测技术。所提出的方法结合了推文和用户活动(如点击或点击)之间的相关性,以及人工免疫系统检测器,以检测由机器人引起的推文,并将其与用户或用户批准的应用程序生成的推文区分开来。这个检测器创建tweet的签名,并将其与动态更新的bot行为签名签名库进行比较。该系统已在Android平台上全面实现,并在几组生成的推文下进行了测试。测试结果表明,该方法在检测机器人推文方面具有很高的准确率,检测率约为95%。
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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