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Particle swarm optimization and feature selection for intrusion detection system

机译:用于入侵检测系统的粒子群优化和特征选择

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The network traffic in the intrusion detection system (IDS) has unpredictable behaviour due to the high computational power. The complexity of the system increases; thus, it is required to investigate the enormous number of features. However, the features that are inappropriate and (or) have some noisy data severely affect the performance of the IDSs. In this study, we have performed feature selection (FS) through a random forest algorithm for reducing irrelevant attributes. It makes the underlying task of intrusion detection effective and efficient. Later, a comparative study is carried through applying different classifiers, e.g., k Nearest Neighbour ( k -NN), Support Vector Machine (SVM), Logistic Regression (LR), decision tree (DT) and Naive Bayes (NB) for measuring the different IDS metrics. The particle swarm optimization (PSO) algorithm was applied on the selective features of the NSL-KDD dataset, which cut down the false alarm rate and enhanced the detection rate and the accuracy of the IDS as compared with the mentioned state-of-the-art classifiers. This study includes the accuracy, precision, false-positive rate and the detection rate as performance metrics for the IDSs. The experimental results show low computational complexity, 99.32% efficiency and 99.26% detection rate on the selected features (=10) out of a complete set (= 41).
机译:由于高计算能力,入侵检测系统(IDS)中的网络流量具有不可预测的行为。系统的复杂性增加;因此,需要调查巨大数量的特征。但是,不合适和(或)具有一些嘈杂的数据的功能严重影响IDS的性能。在本研究中,我们通过随机林算法进行了特征选择(FS),用于减少无关属性。它使入侵检测的潜在任务有效和高效。后来,通过应用不同的分类器,例如K最近邻(K-NN),支持向量机(SVM),Logistic回归(LR),决策树(DT)和NAB)来进行比较研究,用于测量不同的IDS指标。粒子群优化(PSO)算法应用于NSL-KDD数据集的选择性特征,从而减少了误报率并增强了IDS的检测率和ids的准确性,与上述状态相比艺术分类器。本研究包括准确性,精确度,假阳性率和检测率作为IDS的性能指标。实验结果显示出低计算复杂性,效率为99.32%,在完整集中(= 41)中的所选特征(= 10)上的检测率为99.32%。

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