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Improved incremental Support Vector Machine with hybrid feature selection for network intrusion detection

机译:具有混合特征选择功能的改进增量支持向量机,用于网络入侵检测

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Network intrusion detection plays an important role in network security, and this paper presents an approach of hybrid feature selection combined with improved incremental Support Vector Machine (SVM) classification. First, Density-Based Spatial Clustering of Applications with Noise (DBSCAN) is used to trim the original dataset, and a feature selection method, called GATS, which is based upon Genetic Algorithm (GA) embedded tabu search (TS), is used to extract the optimal subset from the reduced dataset. GATS integrates the concept of tabu list which may increase local search performance. Then, an incremental SVM with reserved set method (R-ISVM) is developed to deal with the problem of intrusion detection. Thirdly, according to the variations of classification hyperplane in incremental training, R-ISVM utilizes a concentric-circle model based reserved set strategy to maintain the samples that are most likely to be support vectors in future computation. Data experiments and comparisons with other popular intrusion detection approaches show that our presented method achieves better performance as well as stability.
机译:网络入侵检测在网络安全中起着重要作用,本文提出了一种混合特征选择与改进的增量支持向量机(SVM)分类相结合的方法。首先,使用基于噪声的基于应用程序的空间空间聚类(DBSCAN)来修剪原始数据集,并使用一种基于遗传算法(GA)嵌入式禁忌搜索(TS)的特征选择方法GATS从精简数据集中提取最佳子集。 GATS集成了禁忌列表的概念,可以提高本地搜索的性能。然后,开发了带有保留集方法的增量SVM(R-ISVM)来解决入侵检测问题。第三,根据增量训练中分类超平面的变化,R-ISVM利用基于同心圆模型的保留集策略来维护在将来的计算中最有可能成为支持向量的样本。数据实验和与其他流行的入侵检测方法的比较表明,我们提出的方法具有更好的性能和稳定性。

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