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Application of Data Mining to Network Intrusion Detection: Classifier Selection Model

机译:数据挖掘在网络入侵检测中的应用:分类器选择模型

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As network attacks have increased in number and severity over the past few years, intrusion detection system (IDS) is increasingly becoming a critical component to secure the network. Due to large volumes of security audit data as well as complex and dynamic properties of intrusion behaviors, optimizing performance of IDS becomes an important open problem that is receiving more and more attention from the research community. The uncertainty to explore if certain algorithms perform better for certain attack classes constitutes the motivation for the reported herein. In this paper, we evaluate performance of a comprehensive set of classifier algorithms using KDD99 dataset. Based on evaluation results, best algorithms for each attack category is chosen and two classifier algorithm selection models are proposed. The simulation result comparison indicates that noticeable performance improvement and real-time intrusion detection can be achieved as we apply the proposed models to detect different kinds of network attacks.
机译:在过去几年中,随着网络攻击的数量和严重性增加,入侵检测系统(IDS)日益成为保护网络安全的关键组件。由于大量的安全审核数据以及入侵行为的复杂和动态属性,优化IDS的性能成为一个重要的开放问题,受到研究界的越来越多的关注。探索某些算法对于某些攻击类别是否性能更好的不确定性构成了本文报道的动机。在本文中,我们使用KDD99数据集评估了一组全面的分类器算法的性能。根据评估结果,为每种攻击类别选择最佳算法,并提出了两种分类器算法选择模型。仿真结果比较表明,通过将所提出的模型应用于不同类型的网络攻击,可以实现显着的性能提升和实时入侵检测。

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