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Extracting salient features for network intrusion detection using machine learning methods

机译:使用机器学习方法提取网络入侵检测的显着特征

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This work presents a data preprocessing and feature selection framework to support data mining and network security experts in minimal feature set selection of intrusion detection data. This process is supported by detailed visualisation and examination of class distributions. Distribution histograms, scatter plots and information gain are presented as supportive feature reduction tools. The feature reduction process applied is based on decision tree pruning and backward elimination. This paper starts with an analysis of the KDD Cup '99 datasets and their potential for feature reduction. The dataset consists of connection records with 41 features whose relevance for intrusion detection are not clear. All traffic is either classified `normal' or into the four attack types denial-of-service, network probe, remote-to-local or user-to-root. Using our custom feature selection process, we show how we can significantly reduce the number features in the dataset to a few salient features. We conclude by presenting minimal sets with 4--8 salient features for two-class and multi-class categorisation for detecting intrusions, as well as for the detection of individual attack classes; the performance using a static classifier compares favourably to the performance using all features available. The suggested process is of general nature and can be applied to any similar dataset.
机译:这项工作提出了一个数据预处理和功能选择框架,以支持数据挖掘和网络安全专家以最小的功能选择入侵检测数据。详细的可视化和类分布检查可支持此过程。分布直方图,散点图和信息增益被介绍为支持性特征缩减工具。应用的特征缩减过程基于决策树修剪和后向消除。本文首先分析了KDD Cup '99数据集及其在特征减少方面的潜力。数据集由具有41个要素的连接记录组成,这些要素与入侵检测的相关性尚不清楚。所有流量都被分类为“正常”或分为四种攻击类型:拒绝服务,网络探测,远程到本地或用户到根。通过使用自定义特征选择过程,我们展示了如何将数据集中的特征数量显着减少为几个显着特征。最后,我们提出了具有4--8显着特征的最小集,用于两类和多类分类,以检测入侵以及检测单个攻击类别。使用静态分类器的性能要优于使用所有可用功能的性能。建议的过程具有一般性,可以应用于任何类似的数据集。

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