HERCULE: attack story reconstruction via community discovery on correlated log graph

Kexin Pei, Zhongshu Gu, Brendan Saltaformaggio, Shiqing Ma, Fei Wang, Zhiwei Zhang, Luo Si, X. Zhang, Dongyan Xu
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引用次数: 119

Abstract

Advanced cyber attacks consist of multiple stages aimed at being stealthy and elusive. Such attack patterns leave their footprints spatio-temporally dispersed across many different logs in victim machines. However, existing log-mining intrusion analysis systems typically target only a single type of log to discover evidence of an attack and therefore fail to exploit fundamental inter-log connections. The output of such single-log analysis can hardly reveal the complete attack story for complex, multi-stage attacks. Additionally, some existing approaches require heavyweight system instrumentation, which makes them impractical to deploy in real production environments. To address these problems, we present HERCULE, an automated multi-stage log-based intrusion analysis system. Inspired by graph analytics research in social network analysis, we model multi-stage intrusion analysis as a community discovery problem. HERCULE builds multi-dimensional weighted graphs by correlating log entries across multiple lightweight logs that are readily available on commodity systems. From these, HERCULE discovers any "attack communities" embedded within the graphs. Our evaluation with 15 well known APT attack families demonstrates that HERCULE can reconstruct attack behaviors from a spectrum of cyber attacks that involve multiple stages with high accuracy and low false positive rates.
HERCULE:在相关日志图上通过社区发现重构攻击故事
高级网络攻击包括多个阶段,目的是隐蔽和难以捉摸。这种攻击模式将其足迹在时空上分散在受害机器的许多不同日志中。然而,现有的日志挖掘入侵分析系统通常只针对单一类型的日志来发现攻击的证据,因此无法利用基本的日志间连接。这种单日志分析的输出很难揭示复杂的、多阶段攻击的完整攻击故事。此外,一些现有的方法需要重量级的系统检测,这使得它们在实际的生产环境中部署是不切实际的。为了解决这些问题,我们提出了HERCULE,一个基于日志的自动化多阶段入侵分析系统。受社交网络分析中的图分析研究的启发,我们将多阶段入侵分析建模为一个社区发现问题。HERCULE通过关联多个轻量级日志条目来构建多维加权图,这些日志条目可以在商品系统上随时可用。从这些图中,HERCULE可以发现任何嵌入图中的“攻击社区”。我们对15个知名APT攻击家族的评估表明,HERCULE可以从一系列涉及多个阶段的网络攻击中重建攻击行为,准确率高,假阳性率低。
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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