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首页> 外文期刊>Knowledge and Data Engineering, IEEE Transactions on >Scalable Online Betweenness Centrality in Evolving Graphs
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Scalable Online Betweenness Centrality in Evolving Graphs

机译:演化图中可扩展的在线中间性

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摘要

Betweenness centrality is a classic measure that quantifies the importance of a graph element (vertex or edge) according to the fraction of shortest paths passing through it. This measure is notoriously expensive to compute, and the best known algorithm runs in time. The problems of efficiency and scalability are exacerbated in a dynamic setting, where the input is an evolving graph seen edge by edge, and the goal is to keep the betweenness centrality up to date. In this paper, we propose the first truly scalable algorithm for online computation of betweenness centrality of both vertices and edges in an evolving graph where new edges are added and existing edges are removed. Our algorithm is carefully engineered with out-of-core techniques and tailored for modern parallel stream processing engines that run on clusters of shared-nothing commodity hardware. Hence, it is amenable to real-world deployment. We experiment on graphs that are two orders of magnitude larger than previous studies. Our method is able to keep the betweenness centrality measures up-to-date online, i.e., the time to update the measures is smaller than the inter-arrival time between two consecutive updates.
机译:中间居中性是一种经典度量,它根据通过图元素的最短路径的比例来量化图元素(顶点或边)的重要性。众所周知,此度量的计算成本很高,并且最著名的算法会及时运行。在动态设置中,效率和可伸缩性问题会更加严重,因为输入是逐边观察的不断发展的图形,目标是保持中间性为最新。在本文中,我们提出了第一个真正可扩展的算法,用于在线计算演化图中的顶点和边缘之间的中间性中心性,在该图中添加了新的边缘而删除了现有的边缘。我们的算法是使用核心技术进行精心设计的,并针对在无共享商品硬件集群上运行的现代并行流处理引擎进行了量身定制。因此,它适合实际部署。我们在比以前的研究大两个数量级的图上进行实验。我们的方法能够使居中性中间性度量保持在线最新,即,更新度量的时间小于两次连续更新之间的到达间隔时间。

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