PeerClean:通过动态群体行为分析揭示点对点僵尸网络

Qiben Yan, Yao Zheng, Tingting Jiang, W. Lou, Y. T. Hou
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引用次数: 33

摘要

高级僵尸网络采用点对点(P2P)基础设施,以实现更有弹性的命令和控制(C&C)。传统的检测技术在识别通过P2P结构进行通信的机器人时变得不那么有效。在本文中,我们提出了PeerClean,这是一个仅使用从C&C网络流量中提取的高级特征来实时检测P2P僵尸网络的新系统。PeerClean通过综合考虑流量级流量统计和网络连接模式,可靠地区分受P2P僵尸感染的主机和合法的P2P主机。PeerClean不是处理单个连接或主机,而是将具有相似流量统计数据的主机集群到组中。然后,通过利用一种新的动态群体行为分析,提取每个群体的集体和动态连接模式。与单个主机级连接模式相比,集体组模式具有更强的鲁棒性和可微性。然后使用多类分类模型根据已建立的模式识别不同类型的机器人。为了提高检测概率,我们进一步提出用平均群体行为训练模型,而探索极端群体行为进行检测。我们根据校园网的真实流量记录来评估PeerClean。我们的评估表明,PeerClean能够实现高的检测率和很少的假阳性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PeerClean: Unveiling peer-to-peer botnets through dynamic group behavior analysis
Advanced botnets adopt a peer-to-peer (P2P) infrastructure for more resilient command and control (C&C). Traditional detection techniques become less effective in identifying bots that communicate via a P2P structure. In this paper, we present PeerClean, a novel system that detects P2P botnets in real time using only high-level features extracted from C&C network flow traffic. PeerClean reliably distinguishes P2P bot-infected hosts from legitimate P2P hosts by jointly considering flow-level traffic statistics and network connection patterns. Instead of working on individual connections or hosts, PeerClean clusters hosts with similar flow traffic statistics into groups. It then extracts the collective and dynamic connection patterns of each group by leveraging a novel dynamic group behavior analysis. Comparing with the individual host-level connection patterns, the collective group patterns are more robust and differentiable. Multi-class classification models are then used to identify different types of bots based on the established patterns. To increase the detection probability, we further propose to train the model with average group behavior, but to explore the extreme group behavior for the detection. We evaluate PeerClean on real-world flow records from a campus network. Our evaluation shows that PeerClean is able to achieve high detection rates with few false positives.
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