Research on Network Intrusion Detection Based on Support Vector Machine Optimized with Grasshopper Optimization Algorithm

Z. Ye, Yiheng Sun, Shuang Sun, Sikai Zhan, Han Yu, Quanfeng Yao
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引用次数: 6

Abstract

As one of the most important parts of network security, more significance is attached to intrusion detection system (IDS). Numerous techniques including support vector machine (SVM) have been applied to the intrusion detection. However, many methods are utilized to improve the original SVM whose performance is markedly depended on its kernel parameters. Evolutionary algorithms such as genetic algorithm (GA) and particle swarm algorithm (PSO) are also employed to search better kernel parameters while the traditional optimization methods are vulnerable to fall into local minima with slow speed of convergence. In order to improve the precision of SVM in intrusion detection, the support vector machine based on grasshopper optimization algorithm (GOA-SVM) is proposed in the paper. To verify the practicality of the proposed method, several contrast experiments have been carried out using tool of Matlab. The experimental results finally demonstrates the superior performance of the proposed method on intrusion detection.
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基于Grasshopper优化算法的支持向量机网络入侵检测研究
入侵检测系统作为网络安全的重要组成部分,越来越受到人们的重视。包括支持向量机(SVM)在内的许多技术已被应用于入侵检测。然而,许多方法被用于改进原始支持向量机,其性能明显依赖于其核参数。遗传算法(GA)和粒子群算法(PSO)等进化算法也被用于寻找更好的核参数,而传统的优化方法容易陷入局部极小,收敛速度慢。为了提高支持向量机在入侵检测中的精度,本文提出了基于蝗虫优化算法的支持向量机(GOA-SVM)。为了验证所提方法的实用性,利用Matlab工具进行了多次对比实验。实验结果最终证明了该方法在入侵检测中的优越性能。
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