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ALDD: A Hybrid Traffic-User Behavior Detection Method for Application Layer DDoS

机译:ALDD:应用层DDOS的混合流量用户行为检测方法

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Distributed Denial of Service (DDoS) has been one of the most critical threats to internet applications and web services. Especially with the current advances in network technology, many attackers resort to application layer DDoS (ALDDoS) which utilizes legitimate requests to overwhelm the victim servers. Under this kind of attack, the single request content can be highly similar to normal ones, and this renders previous traffic features-based detection methods void. In this paper, we are addressing two common issues in ALDDoS detection methods: the inaccuracy of traffic feature based detecting algorithms, and the time and space complexity of user behavior-based detecting algorithms. Different from the existing detection pattern for each request, the detection pattern used in this paper is for a time window. We extract instances of traffic and user behaviors from web server logs, and propose a hybrid traffic-user behavior detection method for ALDDoS. Neutral network is adopted for further cluster analysis. Experimental results on the recent public dataset CICIDS2017 indicate that the proposed method can achieve high detection accuracy while reducing 90% of time cost.
机译:服务(DDoS)攻击的分布式拒绝一直是互联网应用程序和Web服务中最关键的威胁之一。特别是随着网络技术的进展,许多攻击者诉诸于应用层的DDoS(ALDDoS),它利用合法请求淹没受害者服务器。在这种攻击中,单个请求的内容可以是高度相似,通常值,这使得基于特征的过往流量检测方法无效。在本文中,我们正在解决ALDDoS检测方法的两个常见问题:交通功能的基础检测算法不准确,以及基于用户行为检测算法的时间和空间复杂度。从每个请求的现有的检测图案不同,在本文中所用的检测模式为一个时间窗口。我们提取流量和用户行为的情况下,从Web服务器日志,并提出ALDDoS混合流量用户行为检测方法。中性网络采用用于进一步聚类分析。在近期公共数据集CICIDS2017实验结果表明,该方法可以达到很高的检测精度,同时减少90%的时间成本。

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