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Wrapper Feature Selection Based on Lightning Attachment Procedure Optimization and Support Vector Machine for Intrusion Detection

机译:基于雷电附件过程优化的包装功能选择和支持向量机入侵检测

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As the internet becoming omnipresent, a large number of attacks exist from the inside of the network. The intrusion detection system, one of the most effective way to monitor the network for defending inner attacks, which is gaining more and more attention. However, in the process of the network intrusion detection, feature redundancy might reduce the accuracy of classification or clustering, increase the time and space complexity and bring down the learning performance and efficiency of the algorithm as well. In the paper, a wrapper feature selection method based on lightning attachment procedure optimization algorithm (LAPO) and support vector machine (SVM) for intrusion detection are proposed. LAPO is a newly proposed nature-inspired algorithm that has robust searchability. For evaluating the performance of the proposed method, the popular KDD Cup 99 dataset is employed. Compared with genetic and particle swarm optimization algorithm, experimental result shows the proposed approach presents a better efficiency and accuracy in searching for the optimal feature subset.
机译:随着互联网成为无所不在的,网络内部存在大量的攻击。入侵检测系统,监控网络用于捍卫内部攻击的最有效方法之一,这越来越多地关注。但是,在网络入侵检测的过程中,功能冗余可能会降低分类或聚类的准确性,增加时间和空间复杂度并降低算法的学习性能和效率。本文提出了一种基于雷电连接过程优化算法(LAPO)和支持向量机(SVM)的包装特征选择方法,用于入侵检测。 LAPO是一种新的新提出的自然灵感算法,具有稳健的搜索性。为了评估所提出的方法的性能,采用了流行的KDD杯99数据集。与遗传和粒子群优化算法相比,实验结果表明,所提出的方法在寻找最佳特征子集中提供更好的效率和准确性。

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