APTHunter: Detecting Advanced Persistent Threats in Early Stages

Moustafa Mahmoud, Mohammad Mannan, A. Youssef
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引用次数: 4

Abstract

We propose APTHunter, a system for prompt detection of Advanced and Persistent Threats (APTs) in early stages. We provide an approach for representing the indicators of compromise that appear in the cyber threat intelligence reports and the relationships among them as provenance queries that capture the attacker’s malicious behavior. We use the kernel audit log as a reliable source for system activities and develop an optimized whole system provenance graph that provides the causal relationships and information flows among system entities in a compact format. Then, we model the threat hunting as a behavior match problem by applying provenance queries to the optimized provenance graph to find any hits as indicators of an APT attack. We evaluate APTHunter on adversarial engagements from DARPA over different OS platforms, as well as real-world APT campaigns. Based on our experimental results, APTHunter promptly and reliably detects attack artifacts in early stages.
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APTHunter:在早期阶段检测高级持续威胁
我们提出APTHunter,一个在早期阶段迅速检测高级和持续威胁(apt)的系统。我们提供了一种方法来表示出现在网络威胁情报报告中的妥协指标,以及它们之间的关系,作为捕获攻击者恶意行为的来源查询。我们使用内核审计日志作为系统活动的可靠来源,并开发了一个优化的整个系统来源图,该图以紧凑的格式提供了系统实体之间的因果关系和信息流。然后,我们将威胁搜索建模为行为匹配问题,通过对优化的来源图应用来源查询来查找任何命中作为APT攻击的指标。我们评估了APTHunter在DARPA不同操作系统平台上的对抗性交战,以及现实世界的APT活动。根据我们的实验结果,APTHunter在早期阶段迅速可靠地检测到攻击工件。
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