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Outlier detection in IP traffic modelled as a link stream using the stability of degree distributions over time

机译:使用随时间变化的稳定性,将IP流量中的异常检测建模为链接流

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This paper aims at precisely detecting and identifying anomalous events in IP traffic. To this end, we adopt the link stream formalism which properly captures temporal and structural features of the data. Within this framework, we focus on finding anomalous behaviours with respect to the degree of IP addresses over time, i.e. the number of distinct IP addresses with which they interact over time. Due to diversity in IP profiles, this feature is typically distributed heterogeneously, preventing us to directly find anomalies. To deal with this challenge, we design a method to detect outliers as well as precisely identify their cause in a sequence of similar heterogeneous distributions. We apply it to several IP traffic captures and we show that it succeeds in detecting relevant patterns in terms of anomalous network activity. (C) 2019 Published by Elsevier B.V.
机译:本文旨在精确检测和识别IP流量中的异常事件。为此,我们采用了链接流形式主义,可以正确地捕获数据的时间和结构特征。在此框架内,我们专注于发现与IP地址随时间变化的程度有关的异常行为,即与IP地址随时间交互的不同IP地址的数量。由于IP配置文件的多样性,此功能通常是异构分布的,从而使我们无法直接发现异常。为了应对这一挑战,我们设计了一种方法来检测异常值,并在一系列相似的异构分布中精确地确定其原因。我们将其应用于多个IP流量捕获,并表明它成功地检测了异常网络活动方面的相关模式。 (C)2019由Elsevier B.V.发布

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