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Real-Time Alert Stream Clustering and Correlation for Discovering Attack Strategies

机译:实时警报流聚类和相关性,以发现攻击策略

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Signature based network intrusion detection systems (NIDSs) often report a massive number of elementary alerts of low-level security-related events which are logically involved in a single multi-stage attack. Since be overwhelmed by these alerts, security administrators almost unable to discover complicated multistage attack in time. It is necessary to develop a real-time system to extracting useful attack strategies from the alert stream, which enables network administrators to launches appropriate response to stop attacks and prevent them form escalating. This paper focuses on developing a new alert clustering and correlation technique to automatically discover attack strategies from the evolving alert stream, without specific prior knowledge. The proposed algorithms can discovery various attack sequential patterns in different kinds of time horizons or user-defined time periods. Experiments show our approach can effectively construct attack scenarios and accordingly predict next most possible attack behavior.
机译:基于签名的网络入侵检测系统(NIDS)通常会报告大量低级安全相关事件的基本警报,这些事件在逻辑上涉及单个多阶段攻击。由于这些警报不堪重负,安全管理员几乎无法及时发现复杂的多阶段攻击。有必要开发一个实时系统以从警报流中提取有用的攻击策略,以使网络管理员能够启动适当的响应以停止攻击并防止其升级。本文着重于开发一种新的警报聚类和关联技术,以从不断发展的警报流中自动发现攻击策略,而无需特定的先验知识。所提出的算法可以在不同的时间范围或用户定义的时间段内发现各种攻击顺序模式。实验表明,我们的方法可以有效地构建攻击场景,并相应地预测下一个最可能的攻击行为。

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