Machine Learning Based DDoS Attack Detection from Source Side in Cloud

Zecheng He, Tianwei Zhang, R. Lee
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引用次数: 118

Abstract

Denial of service (DOS) attacks are a serious threat to network security. These attacks are often sourced from virtual machines in the cloud, rather than from the attacker's own machine, to achieve anonymity and higher network bandwidth. Past research focused on analyzing traffic on the destination (victim's) side with predefined thresholds. These approaches have significant disadvantages. They are only passive defenses after the attack, they cannot use the outbound statistical features of attacks, and it is hard to trace back to the attacker with these approaches. In this paper, we propose a DOS attack detection system on the source side in the cloud, based on machine learning techniques. This system leverages statistical information from both the cloud server's hypervisor and the virtual machines, to prevent network packages from being sent out to the outside network. We evaluate nine machine learning algorithms and carefully compare their performance. Our experimental results show that more than 99.7% of four kinds of DOS attacks are successfully detected. Our approach does not degrade performance and can be easily extended to broader DOS attacks.
基于机器学习的云源端DDoS攻击检测
拒绝服务(DOS)攻击是严重威胁网络安全的一种攻击方式。这些攻击通常来自云中的虚拟机,而不是攻击者自己的机器,以实现匿名和更高的网络带宽。过去的研究主要集中在用预定义的阈值分析目的地(受害者)端的流量。这些方法有明显的缺点。它们只是攻击后的被动防御,不能利用攻击的出站统计特征,很难追踪到攻击者。在本文中,我们提出了一个基于机器学习技术的云源端的DOS攻击检测系统。该系统利用来自云服务器管理程序和虚拟机的统计信息来防止网络包被发送到外部网络。我们评估了九种机器学习算法,并仔细比较了它们的性能。实验结果表明,四种DOS攻击的检测成功率超过99.7%。我们的方法不会降低性能,并且可以很容易地扩展到更广泛的DOS攻击。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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