一种循环流量网络异常检测方法

Shigeaki Harada, R. Kawahara, Tatsuya Mori, N. Kamiyama, H. Hasegawa, H. Yoshino
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引用次数: 5

摘要

我们提出了一种实时自动检测网络异常的方法,如DDoS(分布式拒绝服务)攻击和闪电人群。我们使用实测流量数据对该方法进行了评估,发现它成功地区分了可疑流量。在本文中,我们将重点放在具有每日和/或每周周期的循环流量上,并表明利用这种循环趋势在异常检测中提高了区分精度。我们的方法区分具有不同统计特征的可疑流量和正常流量。同时,它学习循环的大流量流量,如网络运营的流量,并最终认为它是合法的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Method of Detecting Network Anomalies in Cyclic Traffic
We present a method of detecting network anomalies, such as DDoS (distributed denial of service) attacks and flash crowds, automatically in real time. We evaluated this method using measured traffic data and found that it successfully differentiated suspicious traffic. In this paper, we focus on cyclic traffic, which has a daily and/or weekly cycle, and show that the differentiation accuracy is improved by utilizing such a cyclic tendency in anomaly detection. Our method differentiates suspicious traffic that has different statistical characteristics from normal traffic. At the same time, it learns about cyclic large- volume traffic, such as traffic for network operations, and finally considers it to be legitimate.
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