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Characterization of computer network events through simultaneous feature selection and clustering of intrusion alerts

机译:通过同时选择功能和入侵警报群集来表征计算机网络事件

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As computer network security threats increase, many organizations implement multiple Network Intrusion Detection Systems (NIDS) to maximize the likelihood of intrusion detection and provide a comprehensive understanding of intrusion activities. However, NIDS trigger a massive number of alerts on a daily basis. This can be overwhelming for computer network security analysts since it is a slow and tedious process to manually analyse each alert produced. Thus, automated and intelligent clustering of alerts is important to reveal the structural correlation of events by grouping alerts with common features. As the nature of computer network attacks, and therefore alerts, is not known in advance, unsupervised alert clustering is a promising approach to achieve this goal. We propose a joint optimization technique for feature selection and clustering to aggregate similar alerts and to reduce the number of alerts that analysts have to handle individually. More precisely, each identified feature is assigned a binary value, which reflects the feature's saliency. This value is treated as a hidden variable and incorporated into a likelihood function for clustering. Since computing the optimal solution of the likelihood function directly is analytically intractable, we use the Expectation-Maximisation (EM) algorithm to iteratively update the hidden variable and use it to maximize the expected likelihood. Our empirical results, using a labelled Defense Advanced Research Projects Agency (DARPA) 2000 reference dataset, show that the proposed method gives better results than the EM clustering without feature selection in terms of the clustering accuracy.
机译:随着计算机网络安全威胁的增加,许多组织实施了多个网络入侵检测系统(NIDS),以最大程度地提高入侵检测的可能性并全面了解入侵活动。但是,NIDS每天都会触发大量警报。对于计算机网络安全分析人员而言,这可能是不堪重负的,因为手动分析产生的每个警报是一个缓慢而乏味的过程。因此,警报的自动和智能聚类对于通过将警报与常用功能进行分组来揭示事件的结构相关性很重要。由于计算机网络攻击的性质以及警报是事先未知的,因此,无监督的警报群集是实现此目标的一种有前途的方法。我们提出了一种用于特征选择和聚类的联合优化技术,以汇总相似的警报并减少分析人员必须单独处理的警报数量。更准确地说,每个识别的特征都分配了一个二进制值,该值反映了特征的显着性。该值被视为隐藏变量,并合并到用于聚类的似然函数中。由于直接计算似然函数的最优解在分析上是难以解决的,因此我们使用期望最大化(EM)算法来迭代更新隐藏变量,并使用它来最大化期望似然。我们的实验结果,使用带有标签的美国国防部高级研究计划局(DARPA)2000参考数据集,表明在聚类精度方面,所提出的方法比没有特征选择的EM聚类提供了更好的结果。

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