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Clustering approach for false alerts reducing in behavioral based intrusion detection systems

机译:基于行为的入侵检测系统中用于减少虚假警报的聚类方法

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Behavioral intrusion detection systems are known by their high false alerts rates. In this paper, we propose to combine a behavioral intrusion detection approach with a clustering approach in order to obtain a set of clusters with different false alerts rates. The order of these clusters with respect to their false alerts rates will be considered as an alerts prioritization. Hence, new alerts will be classified to the closest cluster and processed according to their cluster priority. Experimental results, using a simulated IDS, show that our approach is able to reduce the false alerts rate produced by behavioral intrusion detection systems.
机译:行为入侵检测系统以其较高的虚假警报率而闻名。在本文中,我们建议将行为入侵检测方法与聚类方法相结合,以获得一组具有不同误报率的聚类。这些群集相对于其错误警报率的顺序将被视为警报优先级。因此,新警报将被分类到最接近的群集,并根据它们的群集优先级进行处理。使用模拟IDS的实验结果表明,我们的方法能够降低行为入侵检测系统产生的虚假警报率。

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