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An Approach for Optimizing Ensemble Intrusion Detection Systems

机译:一种优化集合入侵检测系统的方法

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Intrusion Detection System is yet an interesting research topic. With a very large amount of traffic in real-time networks, feature selection techniques that are effectively able to find important and relevant features are required. Hence, the most important and relevant set of features is the key to improve the performance of intrusion detection system. This study aims to find the best relevant selected features that can be used as important features in a new IDS dataset. To achieve the aim, an approach for generating optimized ensemble IDS is developed. Six features selection methods are used and compared, i.e.: Information Gain (IG), Gain Ratio (GR), Symmetrical Uncertainty (SU), Relief-F (R-F), One-R (OR) and Chi-Square (CS). The feature selection techniques produce sets of selected features. Each best selected number of features that are obtained from feature ranking step for respective feature selection technique will be used to classify attacks via four classification methods, i.e.: Bayesian Network (BN), Naïve Bayesian (NB), Decision Tree: J48 and SOM. Then, each feature selection technique with its respective best features is combined with each classifier method to generate ensemble IDSs. Lastly, the ensemble IDSs are evaluated using Hold-up, K-fold validation approaches, as well as F-Measure and statistical validation approaches. Experimental results using Weka tools on ITD-UTM dataset show the optimized ensemble IDSs using (SU and BN); using (CS and BN) or (CS and SOM) or (IG and NB); and using (OR and BN) with respective ten, four and seven best selected features achieves 81.0316%, 85.2593%, and 80.8625% of accuracy, respectively. In addition, ensemble IDSs using (SU and BN) and using (OR and J48) with ten and six best respective selected features, perform the best F-measure value, i.e.: 0.853 and 0.830, respectively. Indirect comparison with other ensemble IDS on different dataset is discussed.
机译:入侵检测系统是一个有趣的研究主题。在实时网络中具有非常大量的流量,需要有效地找到重要和相关特征的特征选择技术。因此,最重要和相关的功能集是提高入侵检测系统性能的关键。本研究旨在找到最佳相关的选定功能,可在新IDS数据集中使用。为实现目的,开发了一种生成优化集合ID的方法。使用六种特征选择方法,并进行比较,即信息增益(IG),增益比(GR),对称不确定度(SU),reasif-F(R-F),One-R(或)和Chi-Square(CS)。特征选择技术会产生所选功能集。从特征排序步骤获取各个特征选择技术的每个最佳选择的特征数将用于通过四个分类方法对攻击进行分类,即贝叶斯网络(BN),Naïve贝叶斯(NB),决策树:J48和SOM。然后,将每个特征选择技术与其各自的最佳特征组合在于生成集合IDS的每个分类器方法。最后,使用Hold-Up,K-Fold验证方法以及F测量和统计验证方法来评估集合IDS。在ITD-UTM数据集上使用Weka工具的实验结果显示使用(SU和BN)的优化集合IDS;使用(CS和BN)或(CS和SOM)或(IG和NB);使用相应的十个,四个和七个最佳选择特征的使用(或和BN)分别实现了81.0316%,85.2593%和80.8625%的准确性。另外,使用(SU和BN)和使用(或和j48)的合奏IDS,具有十个和六个最佳选择特征,分别执行最佳的F测量值,即0.853和0.830。讨论了与不同数据集上的其他集合ID的间接比较。

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