检测未知的内部威胁场景

W. T. Young, Alex Memory, H. Goldberg, T. Senator
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引用次数: 34

摘要

本文报告了一组实验的结果,这些实验评估了内部威胁检测原型对系统开发人员以前没有看到或考虑到的场景的检测能力。我们展示了检测嵌入在真实数据中的各种内部威胁场景实例的能力,而无需事先了解存在哪些场景或何时发生。我们报告了一种基于集成的无监督技术的结果,该技术用于检测潜在的内部威胁实例,超过八个月的真实监控计算机使用活动,增强了独立开发的,未知但现实的内部威胁场景,在事实之后确定的最佳单个检测器的5%内实现了结果。我们探索了有助于集成方法成功的因素,例如无监督检测器的数量和种类,以及为已知活动模式设计的基于场景的检测器中编码的先验知识的使用。我们报告了整个时期的集合方法和去除基于场景的探测器的烧蚀实验的结果。
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Detecting Unknown Insider Threat Scenarios
This paper reports results from a set of experiments that evaluate an insider threat detection prototype on its ability to detect scenarios that have not previously been seen or contemplated by the developers of the system. We show the ability to detect a large variety of insider threat scenario instances imbedded in real data with no prior knowledge of what scenarios are present or when they occur. We report results of an ensemble-based, unsupervised technique for detecting potential insider threat instances over eight months of real monitored computer usage activity augmented with independently developed, unknown but realistic, insider threat scenarios that robustly achieves results within 5% of the best individual detectors identified after the fact. We explore factors that contribute to the success of the ensemble method, such as the number and variety of unsupervised detectors and the use of prior knowledge encoded in scenario-based detectors designed for known activity patterns. We report results over the entire period of the ensemble approach and of ablation experiments that remove the scenario-based detectors.
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