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Pattern Discovery in DNS Query Traffic

机译:DNS查询流量中的模式发现

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DNS provides a critical function in directing Internet traffic. Traditional rule-based anomaly or intrusion detection methods are not able to update the rules dynamically. Data mining based approaches can find various patterns in massive dynamic query traffic data. In this paper, a novel periodic trend mining method is proposed, as well as a periodic trend pattern based traffic prediction method. Clustering is adopted to partition numerous domain names into separate groups by the characteristics of their query traffic time series. Experimental results on a real-word DNS log indicate data mining based approaches are promising in the domain of DNS service.
机译:DNS提供了引导Internet流量的关键功能。传统的基于规则的异常或入侵检测方法无法动态更新规则。基于数据挖掘的方法可以在海量动态查询流量数据中找到各种模式。本文提出了一种新颖的周期性趋势挖掘方法,以及一种基于周期性趋势模式的交通量预测方法。采用聚类根据查询流量时间序列的特征将众多域名划分为单独的组。在实字DNS日志上的实验结果表明,基于数据挖掘的方法在DNS服务领域很有希望。

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