Artificial Neural Networks Optimized with Unsupervised Clustering for IDS Classification

I. Lafram, N. Berbiche, Jamila El Alami
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Abstract

Information systems are becoming more and more complex and closely linked. These systems are encountering an enormous amount of nefarious traffic while ensuring real - time connectivity. Therefore, a defense method needs to be in place. One of the commonly used tools for network security is intrusion detection systems (IDS). An IDS tries to identify fraudulent activity using predetermined signatures or pre-established user misbehavior while monitoring incoming traffic. Intrusion detection systems based on signature and behavior cannot detect new attacks and fall when small behavior deviations occur. Many researchers have proposed various approaches to intrusion detection using machine learning techniques as a new and promising tool to remedy this problem. In this paper, the authors present a combination of two machine learning methods, unsupervised clustering followed by a supervised classification framework as a Fast, highly scalable and precise packets classification system. This model’s performance is assessed on the new proposed dataset by the Canadian Institute for Cyber security and the University of New Brunswick (CICIDS2017). The overall process was fast, showing high accuracy classification results.
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基于无监督聚类优化的人工神经网络IDS分类
信息系统变得越来越复杂,联系越来越紧密。在确保实时连接的同时,这些系统正在遭遇大量的恶意流量。因此,需要有一种防御方法。入侵检测系统(IDS)是网络安全中常用的工具之一。IDS试图在监视传入流量时使用预定签名或预先建立的用户错误行为来识别欺诈活动。基于特征和行为的入侵检测系统无法检测到新的攻击,当行为发生微小偏差时,系统就会崩溃。许多研究人员提出了各种入侵检测方法,使用机器学习技术作为一种新的有前途的工具来解决这个问题。在本文中,作者提出了两种机器学习方法的组合,即无监督聚类和监督分类框架,作为一种快速、高度可扩展和精确的数据包分类系统。该模型的性能由加拿大网络安全研究所和新不伦瑞克大学(CICIDS2017)在新提出的数据集上进行评估。整个过程速度快,分类结果准确率高。
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