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Design of intelligent KNN-based alarm filter using knowledge-based alert verification in intrusion detection

机译:基于知识预警验证的入侵检测智能KNN警报过滤器设计

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摘要

Network intrusion detection systems (NIDSs) have been widely deployed in various network environments to defend against different kinds of network attacks. However, a large number of alarms especially unwanted alarms such as false alarms and non-critical alarms could be generated during the detection, which can greatly decrease the efficiency of the detection and increase the burden of analysis. To address this issue, we advocate that constructing an alarm filter in terms of expert knowledge is a promising solution. In this paper, we develop a method of knowledge-based alert verification and design an intelligent alarm filter based on a multi-class k-nearest-neighbor classifier to filter out unwanted alarms. In particular, the alarm filter employs a rating mechanism by means of expert knowledge to classify incoming alarms to proper clusters for labeling. We further analyze the effect of different classifier settings on classification accuracy with two alarm datasets. In the evaluation, we investigate the performance of the alarm filter with a real dataset and in a network environment, respectively. Experimental results indicate that our alarm filter can effectively filter out a number of NIDS alarms and can achieve a better outcome under the advanced mode. Copyright (C) 2015 John Wiley & Sons, Ltd.
机译:网络入侵检测系统(NIDS)已广泛部署在各种网络环境中,以防御各种类型的网络攻击。但是,在检测过程中会产生大量的告警,尤其是虚假告警,非关键告警等有害告警,大大降低了检测效率,增加了分析负担。为了解决此问题,我们主张根据专家知识构造警报过滤器是一种有前途的解决方案。在本文中,我们开发了一种基于知识的警报验证方法,并设计了一种基于多类k最近邻分类器的智能警报过滤器,以过滤掉不需要的警报。特别是,警报过滤器通过专家知识采用评级机制,将传入的警报分类为适当的簇以进行标记。我们使用两个警报数据集进一步分析了不同分类器设置对分类准确性的影响。在评估中,我们分别使用实际数据集和网络环境调查了警报过滤器的性能。实验结果表明,我们的警报过滤器可以有效过滤掉许多NIDS警报,并且在高级模式下可以获得更好的结果。版权所有(C)2015 John Wiley&Sons,Ltd.

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