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False positive elimination in intrusion detection based on clustering

机译:基于聚类的入侵检测中的误报消除

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摘要

In order to solve the problem of high false positive in network intrusion detection systems, we adopted clustering algorithms, the K-means algorithm and the Fuzzy C Mean (FCM) algorithm, to identify false alerts, to reduce invalid alerts and to purify alerts for a better analysis. In this paper, we first introduced typical clustering algorithms, including the partition clustering, the hierarchical clustering, the density and grid clustering, and the fuzzy clustering, and then analyzed their feasibilities in security data processing. Furthermore, we introduced an intrusion detection framework, and tested the validity and feasibility of false positive elimination in intrusion detection. The process steps of false positive elimination were clearly described, and additionally, two typical clustering algorithms, the K-means algorithm and the FCM algorithm, were implemented for false alerts identification and filtration. Also, we defined three evaluation indexes: the elimination rate, the false elimination rate and the miss elimination rate. Accordingly, we used DARPA 2000 LLDOS1.0 dataset for our experiments, and adopted Snort as our intrusion detection system. Eventually, the results showed that the method proposed by us has a satisfactory validity and feasibility in false positive elimination, and the clustering algorithms we adopted can achieve a high elimination rate.
机译:为了解决网络入侵检测系统中误报率高的问题,我们采用聚类算法,K-means算法和模糊C均值(FCM)算法来识别误报,减少无效警报并净化警报。更好的分析。本文首先介绍了典型的聚类算法,包括分区聚类,层次聚类,密度和网格聚类以及模糊聚类,然后分析了它们在安全数据处理中的可行性。此外,我们引入了入侵检测框架,并测试了入侵检测中误报消除的有效性和可行性。清楚地描述了误报消除的过程步骤,此外,还实现了两种典型的聚类算法,即K-means算法和FCM算法,以进行误报识别和过滤。此外,我们定义了三个评估指标:消除率,错误消除率和遗漏消除率。因此,我们将DARPA 2000 LLDOS1.0数据集用于我们的实验,并采用Snort作为我们的入侵检测系统。最终结果表明,我们提出的方法在误报消除中具有令人满意的有效性和可行性,并且采用的聚类算法可以达到较高的消除率。

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