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Improving the quality of alerts and predicting intruder's next goal with Hidden Colored Petri-Net

机译:隐藏式有色Petri-Net可提高警报质量并预测入侵者的下一个目标

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摘要

Intrusion detection systems (IDS) often provide poor quality alerts, which are insufficient to support rapid identification of ongoing attacks or predict an intruder's next likely goal. In this paper, we propose a novel approach to alert postprocessing and correlation, the Hidden Colored Petri-Net (HCPN). Different from most other alert correlation methods, our approach treats the alert correlation problem as an inference problem rather than a filter problem. Our approach assumes that the intruder's actions are unknown to the IDS and can be inferred only from the alerts generated by the IDS sensors. HCPN can describe the relationship between different steps carried out by intruders, model observations (alerts) and transitions (actions) separately, and associate each token element (system state) with a probability (or confidence). The model is an extension to Colored Petri-Net (CPN). It is so called "hidden" because the transitions (actions) are not directly observable but can be inferred by looking through the observations (alerts). These features make HCPN especially suitable for discovering intruders' actions from their partial observations (alerts) and predicting intruders' next goal. Our experiments on DARPA evaluation datasets and the attack scenarios from the Grand Challenge Problem (GCP) show that HCPN has promise as a way to reducing false positives and negatives, predicting intruder's next possible action, uncovering intruders' intrusion strategies after the attack scenario has happened, and providing confidence scores.
机译:入侵检测系统(IDS)通常会提供质量较差的警报,不足以支持快速识别正在进行的攻击或预测入侵者的下一个可能目标。在本文中,我们提出了一种用于警报后处理和关联的新方法,即隐藏彩色Petri网(HCPN)。与大多数其他警报关联方法不同,我们的方法将警报关联问题视为推理问题而不是过滤器问题。我们的方法假设入侵者的行为是IDS未知的,并且只能从IDS传感器生成的警报中推断出来。 HCPN可以分别描述入侵者执行的不同步骤之间的关系,模型观察(警报)和过渡(动作),并将每个令牌元素(系统状态)与概率(或置信度)相关联。该模型是彩色Petri网(CPN)的扩展。之所以称为“隐藏”,是因为过渡(动作)不是直接可观察到的,而是可以通过观察(警报)来推断的。这些功能使HCPN特别适用于通过部分观察(警报)发现入侵者的行为并预测入侵者的下一个目标。我们在DARPA评估数据集和“大挑战”(GCP)的攻击场景中进行的实验表明,HCPN有望作为减少误报和消极,预测入侵者下一步行动,在攻击场景发生后揭示入侵者入侵策略的一种方式,并提供信心分数。

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