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An efficient intrusion detection technique based on support vector machine and improved binary gravitational search algorithm

机译:一种基于支持向量机的高效入侵检测技术及改进的二元重力搜索算法

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摘要

'Curse of Dimensionality' and the trade-off between high detection rate and less false alarm rate make the design of an efficient and robust Intrusion Detection System, an open research challenge. In this way, we present Hyper Clique-Improved Binary Gravitational Search Algorithm based Support Vector Machine (HC-IBGSA SVM), an efficient and adaptive intrusion detection technique to improve the performance of SVM in terms of detection rate and false alarm rate. HC-IBGSA SVM employs hyper clique property of hypergraph, novel mutation operator, and Newton-Raphson inspired position update function to fasten the search for an optimal solution and to prevent premature convergence. Further, HC-IBGSA uses a weighted objective function to maintain the trade-off between maximizing detection rate and minimizing the false alarm rate and the optimal number of features. The experimental evaluations were carried out using two benchmark intrusion datasets, namely NSL-KDD CUP dataset and UNSW-NB15 dataset under two scenarios (1) SVM trained with all features, and (2) SVM trained with the optimal feature subset and model parameters obtained from HC-IBGSA in terms of various quality metrics, stability analysis and statistical test.
机译:“维度的诅咒”和高检测率和较少误报率之间的权衡使得高效且稳健的入侵检测系统的设计,开放的研究挑战。通过这种方式,我们呈现了基于Hyper Clique改进的二元重力搜索算法的支持向量机(HC-IBGSA SVM),一种高效和自适应的入侵检测技术,在检测率和误报率方面提高SVM的性能。 HC-IBGSA SVM采用超图,新颖突变运算符的Hyper Clique属性,以及牛顿Raphson启发的位置更新功能,以固定寻求最佳解决方案,并防止过早收敛。此外,HC-IBGSA使用加权目标函数来在最大化检测率和最小化误报率和最佳特征数量之间保持权衡。使用两个基准入侵数据集进行实验性评估,即NSL-KDD CUP数据集和UNSW-NB15数据集,其两种情况(1)SVM培训,(2)SVM,具有最佳特征子集和所获得的型号参数培训从HC-IBGSA就各种质量指标,稳定性分析和统计测试。

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