Application of Partial-Connected Dynamic and GA-Optimized Neural Networks to Misuse Detection Using Categorized and Ranked Input Features

M. Sheikhan, Z. Jadidi, A. Farrokhi
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Abstract

The number of attacks in computer networks has grown extensively, and many new intrusive methods have appeared. Intrusion detection is known as an effective method to secure the information and communication systems. In this paper, the performance of Elman and partial-connected dynamic neural network (PCDNN) architectures are investigated for misuse detection in computer networks. To select the most significant features, logistic regression is also used to rank the input features of mentioned neural networks (NNs) based on the Chi-square values for different selected subsets in this work. In addition, genetic algorithm (GA) is used as an optimization search scheme to determine the sub-optimal architecture of investigated NNs with selected input features. International knowledge discovery and data mining group (KDD) dataset is used for training and test of the mentioned models in this study. The features of KDD data are categorized as basic, content, time-based traffic, and host-based traffic features. Empirical results show that PCDNN with selected input features and categorized input connections offers better detection rate (DR) among the investigated models. The mentioned NN also performs better in terms of cost per example (CPE) when compared to other proposed models in this study. False alarm rate (FAR) of the PCDNN with selected input features and categorized input connections is better than other proposed models, as well. Normal 0 false false false EN-US X-NONE AR-SA MicrosoftInternetExplorer4
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部分连通动态ga优化神经网络在输入特征分类排序误用检测中的应用
计算机网络攻击的数量急剧增加,出现了许多新的入侵手段。入侵检测是保护信息通信系统安全的一种有效手段。本文研究了Elman和部分连通动态神经网络(PCDNN)结构在计算机网络误用检测中的性能。为了选择最显著的特征,在这项工作中,还使用逻辑回归根据不同选择子集的卡方值对提到的神经网络(nn)的输入特征进行排序。此外,采用遗传算法(GA)作为优化搜索方案来确定所研究的具有选定输入特征的神经网络的次优结构。本研究使用国际知识发现和数据挖掘组(KDD)数据集对上述模型进行训练和测试。KDD数据的特征分为基础特征、内容特征、基于时间的流量特征和基于主机的流量特征。实验结果表明,选择输入特征和分类输入连接的PCDNN在所研究的模型中具有更好的检测率(DR)。与本研究中提出的其他模型相比,上述NN在每例成本(CPE)方面也表现更好。选择输入特征和分类输入连接的PCDNN的虚警率(FAR)也优于其他提出的模型。正常0 false false false EN-US X-NONE AR-SA MicrosoftInternetExplorer4
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来源期刊
Majlesi Journal of Electrical Engineering
Majlesi Journal of Electrical Engineering Engineering-Electrical and Electronic Engineering
CiteScore
1.20
自引率
0.00%
发文量
9
期刊介绍: The scope of Majlesi Journal of Electrcial Engineering (MJEE) is ranging from mathematical foundation to practical engineering design in all areas of electrical engineering. The editorial board is international and original unpublished papers are welcome from throughout the world. The journal is devoted primarily to research papers, but very high quality survey and tutorial papers are also published. There is no publication charge for the authors.
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