早起的鸟儿得到僵尸网络:基于马尔可夫链的僵尸网络攻击预警系统

Zainab Abaid, D. Sarkar, M. Kâafar, Sanjay Jha
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引用次数: 18

摘要

僵尸网络威胁包括大量可能的攻击,从分布式拒绝服务(DDoS)到驱动下载恶意软件分发和垃圾邮件。虽然在过去的二十多年里,已经提出了提高攻击准确性或加速检测的技术,但大部分损害都是在攻击被控制的时候造成的。在这项工作中,我们采取了一个新的方向,旨在预测即将到来的攻击(即在它们发生之前),为网络管理员提供早期警告,然后他们可以在它们出现或仅仅隔离主机时准备遏制它们。我们的方法是基于将僵尸网络感染序列建模为马尔可夫链,目的是识别可能导致攻击的行为。我们展示了将马尔可夫模型应用于现实世界僵尸网络数据的结果,并表明使用这种方法,我们能够成功地预测来自各种僵尸网络家族的98%以上的攻击,并且误报率非常低。
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The Early Bird Gets the Botnet: A Markov Chain Based Early Warning System for Botnet Attacks
Botnet threats include a plethora of possible attacks ranging from distributed denial of service (DDoS), to drive-by-download malware distribution and spam. While for over two decades, techniques have been proposed for either improving accuracy or speeding up the detection of attacks, much of the damage is done by the time attacks are contained. In this work we take a new direction which aims to predict forthcoming attacks (i.e. before they occur), providing early warnings to network administrators who can then prepare to contain them as soon as they manifest or simply quarantine hosts. Our approach is based on modelling the Botnet infection sequence as a Markov chain with the objective of identifying behaviour that is likely to lead to attacks. We present the results of applying a Markov model to real world Botnets' data, and show that with this approach we are successfully able to predict more than 98% of attacks from a variety of Botnet families with a very low false alarm rate.
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