来源图中的局部聚类

P. Macko, Daniel W. Margo, M. Seltzer
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引用次数: 17

摘要

捕获和存储数据来源的系统,记录对象如何到达其当前状态,随着时间的推移积累历史元数据,形成一个大的图。在这些图中的局部聚类,我们从一个种子顶点开始,并围绕它增长一个聚类,是至关重要的,因为它支持关键的来源应用程序,比如识别对象历史中语义上有意义的任务。然而,一般的图聚类算法在这些任务中并不有效。我们确定了来源图的三个关键属性,并利用它们来证明我们开发的用于在来源图上执行局部聚类的两个新的中心性度量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Local clustering in provenance graphs
Systems that capture and store data provenance, the record of how an object has arrived at its current state, accumulate historical metadata over time, forming a large graph. Local clustering in these graphs, in which we start with a seed vertex and grow a cluster around it, is of paramount importance because it supports critical provenance applications such as identifying semantically meaningful tasks in an object's history. However, generic graph clustering algorithms are not effective at these tasks. We identify three key properties of provenance graphs and exploit them to justify two new centrality metrics we developed for use in performing local clustering on provenance graphs.
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