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A study on intrusion detection using neural networks trained with evolutionary algorithms

机译:用进化算法训练的神经网络入侵检测研究

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摘要

Intrusion detection has been playing a crucial role for making a computer network secure for any transaction. An intrusion detection system (IDS) detects various types of malicious network traffic and computer usage, which sometimes may not be detected by a conventional firewall. Recently, many IDS have been developed based on machine learning techniques. Specifically, advanced detection approaches created by combining or integrating evolutionary algorithms and neural networks have shown better detection performance than general machine learning approaches. The present study reports two new hybrid intrusion detection methods; one is based on gravitational search (GS), and other one is a combination of GS and particle swarm optimization (GSPSO). These two techniques have been successfully implemented to train artificial neural network (ANN) and the resulting models: GS-ANN and GSPSO-ANN are successfully applied for intrusion detection process. The applicability of these proposed approaches is also compared with other conventional methods such as decision tree, ANN based on gradient descent (GD-ANN), ANN based on genetic algorithm (GA-ANN) and ANN based on PSO (PSO-ANN) by testing with NSL-KDD dataset. Moreover, the results obtained by GS-ANN and GSPSO-ANN are found to be statistically significant based on the popular Wilcoxon's rank sum test as compared to other conventional techniques. The obtained test results reported that the proposed GS-ANN and GSPSO-ANN could achieve a maximum detection accuracy of 94.9 and 98.13 % respectively. The proposed models (GS-ANN and GSPSO-ANN) could also achieve good performance when tested with highly imbalanced datasets.
机译:入侵检测一直在扮演对任何交易的计算机网络安全的关键作用。入侵检测系统(IDS)检测各种类型的恶意网络流量和计算机使用情况,其有时可能不会被传统防火墙检测到。最近,已经基于机器学习技术开发了许多ID。具体地,通过组合或集成进化算法和神经网络产生的高级检测方法表明了比一般机器学习方法更好的检测性能。本研究报告了两种新的混合侵入检测方法;一个基于引力搜索(GS),另一个是GS和粒子群优化(GSPSO)的组合。已经成功实施了这两种技术以培训人工神经网络(ANN)和所产生的模型:GS-ANN和GSPSO-ANN被成功应用于入侵检测过程。这些拟议方法的适用性也与基于PSO(PSO-ANN)的遗传算法(GA-ANN)的梯度下降(GD-ANN),基于PSO(PSO-ANN)的梯度下降(GD-ANN)。使用NSL-KDD数据集进行测试。此外,与其他常规技术相比,通过GS-ANN和GSPSO-ANN获得的结果基于流行的Wilcoxon的等级和测试,在统计学上显着。所获得的测试结果报告说,所提出的GS-ANN和GSPSO-ANN分别可以分别达到94.9和98.13%的最大检测精度。拟议的模型(GS-ANN和GSPSO-ANN)也可以在用高度不平衡的数据集进行测试时实现良好的性能。

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