Towards an approximate graph entropy measure for identifying incidents in network event data

P. Tee, G. Parisis, I. Wakeman
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引用次数: 7

Abstract

A key objective of monitoring networks is to identify potential service threatening outages from events within the network before service is interrupted. Identifying causal events, Root Cause Analysis (RCA), is an active area of research, but current approaches are vulnerable to scaling issues with high event rates. Elimination of noisy events that are not causal is key to ensuring the scalability of RCA. In this paper, we introduce vertex-level measures inspired by Graph Entropy and propose their suitability as a categorization metric to identify nodes that are a priori of more interest as a source of events. We consider a class of measures based on Structural, Chromatic and Von Neumann Entropy. These measures require NP-Hard calculations over the whole graph, an approach which obviously does not scale for large dynamic graphs that characterise modern networks. In this work we identify and justify a local measure of vertex graph entropy, which behaves in a similar fashion to global measures of entropy when summed across the whole graph. We show that such measures are correlated with nodes that generate incidents across a network from a real data set.
基于近似图熵的网络事件数据事件识别方法研究
监控网络的一个关键目标是在服务中断之前从网络内的事件中识别潜在的服务威胁中断。确定因果事件的根本原因分析(RCA)是一个活跃的研究领域,但目前的方法容易受到高事件发生率的影响。消除非因果性的噪声事件是确保RCA可伸缩性的关键。在本文中,我们引入了受图熵启发的顶点级度量,并提出了它们作为分类度量的适用性,以识别先验地更感兴趣的节点作为事件源。我们考虑了一类基于结构熵、色熵和冯·诺依曼熵的测度。这些措施需要在整个图上进行NP-Hard计算,这种方法显然不适用于现代网络特征的大型动态图。在这项工作中,我们确定并证明了顶点图熵的局部度量,当对整个图求和时,它的行为与全局熵度量类似。我们表明,这些措施与从真实数据集跨网络生成事件的节点相关。
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