Back-Propagating System Dependency Impact for Attack Investigation

Pengcheng Fang, Peng Gao, Changlin Liu, Erman Ayday, Kangkook Jee, Ting Wang, Yanfang Ye, Zhuotao Liu, Xusheng Xiao
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引用次数: 15

Abstract

Causality analysis on system auditing data has emerged as an important solution for attack investigation. Given a POI (Point-Of-Interest) event (e.g., an alert fired on a suspicious file creation), causality analysis constructs a dependency graph, in which nodes represent system entities (e.g., processes and files) and edges represent dependencies among entities, to reveal the attack sequence. However, causality analysis often produces a huge graph (> 100,000 edges) that is hard for security analysts to inspect. From the dependency graphs of various attacks, we observe that (1) dependencies that are highly related to the POI event often exhibit a different set of properties (e.g., data flow and time) from the lessrelevant dependencies; (2) the POI event is often related to a few attack entries (e.g., downloading a file). Based on these insights, we propose DEPIMPACT, a framework that identifies the critical component of a dependency graph (i.e., a subgraph) by (1) assigning discriminative dependency weights to edges to distinguish critical edges that represent the attack sequence from less-important dependencies, (2) propagating dependency impacts backward from the POI event to entry points, and (3) performing forward causality analysis from the top-ranked entry nodes based on their dependency impacts to filter out edges that are not found in the forward causality analysis. Our evaluations on the 150 million real system auditing events of real attacks and the DARPA TC dataset show that DEPIMPACT can significantly reduce the large dependency graphs (∼ 1,000,000 edges) to a small graph (∼ 234 edges), which is 4611× smaller. The comparison with the other state-of-the-art causality analysis techniques shows that DEPIMPACT is 106× more effective in reducing the dependency graphs while preserving the attack sequences.
反向传播系统依赖对攻击调查的影响
系统审计数据的因果关系分析已经成为攻击调查的重要解决方案。给定一个POI (Point-Of-Interest)事件(例如,对可疑文件创建发出警报),因果关系分析构建一个依赖关系图,其中节点表示系统实体(例如,进程和文件),边表示实体之间的依赖关系,以揭示攻击序列。然而,因果关系分析通常会产生一个巨大的图(> 100,000条边),这对安全分析师来说很难检查。从各种攻击的依赖关系图中,我们观察到:(1)与POI事件高度相关的依赖关系通常表现出与不太相关的依赖关系不同的属性集(例如,数据流和时间);(2) POI事件通常与几个攻击条目(例如,下载文件)有关。基于这些见解,我们提出了DEPIMPACT,一个识别依赖图(即子图)关键组件的框架,通过(1)为边缘分配判别依赖权重,以区分代表攻击序列的关键边缘和不太重要的依赖关系,(2)将依赖影响从POI事件向后传播到入口点,(3)对排名靠前的入口节点进行前向因果分析,过滤掉前向因果分析中没有发现的边。我们对1.5亿个真实攻击的真实系统审计事件和DARPA TC数据集的评估表明,DEPIMPACT可以显着将大型依赖图(~ 1,000,000条边)减少到一个小图(~ 234条边),其大小为4611倍。与其他最先进的因果分析技术的比较表明,DEPIMPACT在保留攻击序列的同时减少依赖图的效率提高了106倍。
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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