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Using graph partitioning to discover regions of correlated spatio-temporal change in evolving graphs

机译:使用图分区发现演化图中相关的时空变化区域

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摘要

There is growing interest in studying dynamic graphs, or graphs that evolve with time. In this work, we investigate a new type of dynamic graph analysis - finding regions of a graph that are evolving in a similar manner and are topologically similar over a period of time. For example, these regions can be used to group a set of changes having a common cause in event detection and fault diagnosis. Prior work [6] has proposed a greedy framework called cSTAG to find these regions. It was accurate in datasets where the regions are temporally and spatially well separated. However, in cases where the regions are not well separated, cSTAG produces incorrect groupings. In this paper, we propose a new algorithm called regHunter. It treats the region discovery problem as a multi-objective optimisation problem, and it uses a multi-level graph partitioning algorithm to discover the regions of correlated change. In addition, we propose an external clustering validation technique, and use several existing internal measures to evaluate the accuracy of regHunter. Using synthetic datasets, we found regHunter is significantly more accurate than cSTAG in dynamic graphs that have regions with small separation. Using two real datasets - the access graph of the 1998 World Cup website, and the BGP connectivity graph during the landfall of Hurricane Katrina - we found regHunter obtained more accurate results than cSTAG. Furthermore, regHunter was able to discover two interesting regions for the World Cup access graph that CSTAG was not able to find.
机译:研究动态图或随时间变化的图的兴趣日益浓厚。在这项工作中,我们研究了一种新型的动态图分析-查找图的区域,这些区域以相似的方式演化并且在一段时间内在拓扑上相似。例如,这些区域可用于对事件检测和故障诊断中具有共同原因的一组变化进行分组。先前的工作[6]提出了一个名为cSTAG的贪婪框架来查找这些区域。在区域在时间和空间上都很好分离的数据集中,它是准确的。但是,在区域分隔不佳的情况下,cSTAG会产生错误的分组。在本文中,我们提出了一种称为regHunter的新算法。它将区域发现问题视为多目标优化问题,并且使用多级图划分算法来发现相关变化的区域。此外,我们提出了一种外部聚类验证技术,并使用了几种现有的内部措施来评估regHunter的准确性。使用合成数据集,我们发现在区域具有较小分隔的动态图中,regHunter比cSTAG准确得多。使用两个真实的数据集-1998年世界杯网站的访问图和卡特里娜飓风登陆期间的BGP连接图-我们发现regHunter获得的结果比cSTAG更准确。此外,regHunter能够为CSTAG找不到的世界杯访问图发现两个有趣的区域。

著录项

  • 来源
    《Intelligent data analysis》 |2009年第5期|755-793|共39页
  • 作者单位

    NICTA Victoria Research Laboratory, Department of Computer Science and Software Engineering, University of Melbourne, Victoria 3010, Australia;

    NICTA Victoria Research Laboratory, Department of Computer Science and Software Engineering, University of Melbourne, Victoria 3010, Australia;

    NICTA Victoria Research Laboratory, Department of Computer Science and Software Engineering, University of Melbourne, Victoria 3010, Australia;

  • 收录信息 美国《科学引文索引》(SCI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    dynamic graphs; graph mining; regions; graph partitioning; BGP connectivity graph; web access graph;

    机译:动态图;图挖掘地区;图分区BGP连接图;网络访问图;

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