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Anomaly detection of domain name system (DNS) query traffic at top level domain servers

机译:顶级域服务器上的域名系统(DNS)查询流量异常检测

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Major network events can be reflected on domain name system (DNS) traffic at the top level server on the DNS hierarchical structure. This paper pursues a novel approach to detect the DNS traffic anomaly of 5.19 events in China at CN top level domain server using covariance analysis. We normalize, expand and average the covariance changes for different length of time slice to enhance the robustness of detection. Feature anomaly is detected based on clustering analysis of covariance change anomaly. To improve the accuracy and reduce the complexity of the k –means algorithm, an initial cluster selection technique is proposed and its performance is analyzed. Transient anomaly and time span anomaly are defined and an efficient real time approximating algorithm is derived. We use an incremental computational method for covariance matrix. The computation and transmission scheme of feature values are analyzed and the process of the detecting algorithm is given. The traffic detecting results of 5.19 event shows that the approach can accurately detect the network anomaly.
机译:主要网络事件可以反映在DNS层次结构上顶级服务器上的域名系统(DNS)流量上。本文采用协方差分析方法,探索了一种在CN顶级域服务器上检测中国5.19事件DNS流量异常的新方法。我们对不同时间段的协方差变化进行归一化,扩展和平均,以增强检测的鲁棒性。基于协方差变化异常的聚类分析来检测特征异常。为了提高准确性并降低k均值算法的复杂性,提出了一种初始聚类选择技术,并对其性能进行了分析。定义了瞬态异常和时间跨度异常,并导出了一种高效的实时近似算法。我们对协方差矩阵使用增量计算方法。分析了特征值的计算和传输方案,给出了检测算法的过程。 5.19事件的流量检测结果表明,该方法可以准确地检测网络异常。

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