PeerHunter: Detecting peer-to-peer botnets through community behavior analysis

Di Zhuang, J. M. Chang
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引用次数: 28

Abstract

Peer-to-peer (P2P) botnets have become one of the major threats in network security for serving as the infrastructure that responsible for various of cyber-crimes. Though a few existing work claimed to detect traditional botnets effectively, the problem of detecting P2P botnets involves more challenges. In this paper, we present PeerHunter, a community behavior analysis based method, which is capable of detecting botnets that communicate via a P2P structure. PeerHunter starts from a P2P hosts detection component. Then, it uses mutual contacts as the main feature to cluster bots into communities. Finally, it uses community behavior analysis to detect potential botnet communities and further identify bot candidates. Through extensive experiments with real and simulated network traces, PeerHunter can achieve very high detection rate and low false positives.
PeerHunter:通过社区行为分析检测点对点僵尸网络
点对点(P2P)僵尸网络作为各种网络犯罪的基础设施,已成为网络安全的主要威胁之一。虽然现有的一些研究声称可以有效地检测传统的僵尸网络,但P2P僵尸网络的检测问题涉及到更多的挑战。在本文中,我们提出了PeerHunter,一种基于社区行为分析的方法,它能够检测通过P2P结构进行通信的僵尸网络。PeerHunter从P2P主机检测组件启动。然后,它以相互联系为主要特征,将机器人聚集到社区中。最后,使用社区行为分析来检测潜在的僵尸网络社区,并进一步识别候选僵尸网络。通过对真实和模拟网络痕迹的大量实验,PeerHunter可以实现非常高的检测率和低误报。
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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