基于机器学习的云Web应用HTTP DoS攻击检测

Jae-hun Cho, Jae Min Park, Tae Hyeop Kim, Seung Wook Lee, Jiyeon Kim
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摘要

最近,由于企业和公共部门信息系统向云的加速迁移,云web应用程序的数量正在增加。传统的针对云web应用的网络攻击以DoS (Denial of Service)攻击为特征,这种攻击以大量的报文消耗网络资源。然而,消耗应用程序资源的HTTP DoS攻击近年来也在不断增加;因此,开发安全技术来防止它们是必要的。特别是,由于低带宽HTTP DoS攻击不消耗网络资源,因此使用监视网络指标的传统安全解决方案很难识别它们。在本文中,我们提出了一种新的检测模型,通过收集web服务器的应用程序指标并使用机器学习来检测云web应用程序的HTTP DoS攻击。我们从Apache web服务器上收集了18种类型的应用程序指标,并使用5种机器学习和2种深度学习模型来训练收集到的数据。此外,我们通过收集和训练6个额外的网络指标,并将它们的性能与提出的模型进行比较,证实了基于应用程序指标的机器学习模型的优越性。在HTTP DoS攻击中,我们分别注入了低带宽攻击RUDY和高带宽攻击HULK。通过使用所提出的模型检测这两种攻击,我们发现基于应用指标的机器学习模型的F1分数分别比基于网络指标的模型高0.3和0.1左右。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning-based Detection of HTTP DoS Attacks for Cloud Web Applications
Recently, the number of cloud web applications is increasing owing to the accelerated migration of enterprises and public sector information systems to the cloud. Traditional network attacks on cloud web applications are characterized by Denial of Service (DoS) attacks, which consume network resources with a large number of packets. However, HTTP DoS attacks, which consume application resources, are also increasing recently; as such, developing security technologies to prevent them is necessary. In particular, since low-bandwidth HTTP DoS attacks do not consume network resources, they are difficult to identify using traditional security solutions that monitor network metrics. In this paper, we propose a new detection model for detecting HTTP DoS attacks on cloud web applications by collecting the application metrics of web servers and learning them using machine learning. We collected 18 types of application metrics from an Apache web server and used five machine learning and two deep learning models to train the collected data. Further, we confirmed the superiority of the application metrics-based machine learning model by collecting and training 6 additional network metrics and comparing their performance with the proposed models. Among HTTP DoS attacks, we injected the RUDY and HULK attacks, which are low- and high-bandwidth attacks, respectively. As a result of detecting these two attacks using the proposed model, we found out that the F1 scores of the application metrics-based machine learning model were about 0.3 and 0.1 higher than that of the network metrics-based model, respectively.
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