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Intrusion detection using reduced-size RNN based on feature grouping

机译:使用基于特征分组的小型RNN进行入侵检测

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摘要

Intrusion detection is well-known as an essential component to secure the systems in Information and Communication Technology (ICT). Based on the type of analyzing events, two kinds of Intrusion Detection Systems (IDS) have been proposed: anomaly-based and misuse-based. In this paper, three-layer Recurrent Neural Network (RNN) architecture with categorized features as inputs and attack types as outputs of RNN is proposed as misuse-based IDS. The input features are categorized to basic features, content features, time-based traffic features, and host-based traffic features. The attack types are classified to Denial-of-Service (DoS), Probe, Remote-to-Local (R2L), and User-to-Root (U2R). For this purpose, in this study, we use the 41 features per connection defined by International Knowledge Discovery and Data mining group (KDD). The RNN has an extra output which corresponds to normal class (no attack). The connections between the nodes of two hidden layers of RNN are considered partial. Experimental results show that the proposed model is able to improve classification rate, particularly in R2L attacks. This method also offers better Detection Rate (DR) and Cost Per Example (CPE) when compared to similar related works and also the simulated Multi-Layer Perceptron (MLP) and Elman-based intrusion detectors. On the other hand, False Alarm Rate (FAR) of the proposed model is not degraded significantly when compared to some recent machine learning methods.
机译:众所周知,入侵检测是确保信息和通信技术(ICT)中系统安全的必要组件。基于事件分析的类型,提出了两种入侵检测系统(IDS):基于异常和基于滥用。在本文中,将三类递归神经网络(RNN)架构作为基于滥用的IDS提出,该架构具有分类特征作为输入,攻击类型作为RNN的输出。输入功能分为基本功能,内容功能,基于时间的流量功能和基于主机的流量功能。攻击类型分为拒绝服务(DoS),探测,远程到本地(R2L)和用户到根(U2R)。为此,在本研究中,我们使用国际知识发现和数据挖掘小组(KDD)定义的每个连接41个功能。 RNN具有一个对应于普通班级的额外输出(无攻击)。 RNN的两个隐藏层的节点之间的连接被认为是局部的。实验结果表明,该模型能够提高分类率,特别是在R2L攻击中。与类似的相关作品以及模拟的多层感知器(MLP)和基于Elman的入侵检测器相比,该方法还提供了更好的检测率(DR)和示例成本(CPE)。另一方面,与某些最新的机器学习方法相比,所提出模型的误报率(FAR)不会显着降低。

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