Time based anomaly detection using residual polynomial fitting on aggregate traffic statistic

Yudha Purwanto, Kuspriyanto, Hendrawan, B. Rahardjo
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引用次数: 3

Abstract

Flashcrowd and Distributed Denial of Service (DDoS) almost has similar symptom across network and server. But security element such Intrusion Detection System (IDS) must handle both differently. If IDS cannot differentiate flashcrowd and DDoS attack, Quality of Service of legal user traffic in flashcrowd will degraded. So it is important for IDS to differentiate between flashcrowd and DDoS. Many earlier comparison method could sense the anomalous event, but not pay much attention to identify which flow was the anomaly. We presented residual calculation between windowed aggregate traffic statistical value combination. With residual calculation among statistical percentile 10th and mean, a high accuracy of flashcrowd and DDoS differentiation of synthetic anomalous event gained. This method could directly identify the anomalous flow and perform visual analysis to detect the start to end of both event.
基于残差多项式拟合的基于时间的交通统计异常检测
Flashcrowd和分布式拒绝服务攻击(DDoS)在跨网络和跨服务器上几乎具有相似的症状。但是像入侵检测系统(IDS)这样的安全元素必须对两者进行不同的处理。如果IDS无法区分快闪人群和DDoS攻击,将会降低对快闪人群中合法用户流量的服务质量。因此,IDS区分flashcrowd和DDoS是很重要的。许多早期的对比方法可以感知异常事件,但不太注意识别哪些流是异常。提出了窗口聚合流量统计值组合之间的残差计算。通过统计百分位数10和平均值的残差计算,获得了较高的flashcrowd和DDoS综合异常事件判别准确率。该方法可以直接识别异常流,并进行可视化分析,以检测两个事件的开始和结束。
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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