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Host intrusion detection using system call argument-based clustering combined with Bayesian classification

机译:使用基于系统调用参数的聚类与贝叶斯分类相结合的主机入侵检测

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We deal in this paper with anomaly-based host intrusion detection using system call traces produced by a host's kernel. In addition to the sequences, we leverage system call arguments, contextual information and domain level knowledge to produce clusters for each individual system call. These clusters are then used to rewrite process sequences of system calls obtained from kernel logs. The new sequences are then fed to a naïve Bayes supervised classifier (SC2.2) that builds class conditional probabilities from Markov modeling of system call sequences. The results of our proposed two-stage (that is clustering followed by classification) intrusion detection system on the 1999 DARPA dataset from the MIT Lincoln Lab show significant performance improvements in terms of false positive rate, while maintaining a high detection rate when compared with other classifiers. The two-stage classifier fares also better than classification alone with SC2.2 on system calls without arguments and contextual knowledge.
机译:我们在本文中使用由主机内核产生的系统调用跟踪来处理基于异常的主机入侵检测。除了序列之外,我们还利用系统调用参数,上下文信息和域级别知识为每个单独的系统调用生成集群。然后,这些集群用于重写从内核日志获得的系统调用的处理序列。然后,将新序列馈送到朴素的贝叶斯监督分类器(SC2.2),该分类器根据系统调用序列的马尔可夫建模来建立类条件概率。我们在MIT Lincoln Lab的1999 DARPA数据集上提出的两阶段(即聚类,然后进行分类)入侵检测系统的结果显示出在误报率方面的显着性能改进,同时与其他方法相比仍保持较高的检测率分类器。与没有参数和上下文知识的系统调用相比,两阶段分类器的性能也优于单独使用SC2.2进行分类。

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