Clustering Streaming Graphs

A. Eldawy, R. Khandekar, Kun-Lung Wu
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引用次数: 13

Abstract

In this paper, we propose techniques for clustering large-scale "streaming" graphs where the updates to a graph are given in form of a stream of vertex or edge additions and deletions. Our algorithm handles such updates in an online and incremental manner and it can be easily parallel zed. Several previous graph clustering algorithms fall short of handling massive and streaming graphs because they are centralized, they need to know the entire graph beforehand and are not incremental, or they incur an excessive computational overhead. Our algorithm's fundamental building block is called graph reservoir sampling. We maintain a reservoir sample of the edges as the graph changes while satisfying certain desired properties like bounding number of clusters or cluster-sizes. We then declare connected components in the sampled sub graph as clusters of the original graph. Our experiments on real graphs show that our approach not only yields clusterings with very good quality, but also obtains orders of magnitude higher throughput, when compared to offline algorithms.
聚类流图
在本文中,我们提出了聚类大规模“流”图的技术,其中对图的更新以顶点或边的添加和删除流的形式给出。我们的算法以在线和增量的方式处理这种更新,并且可以很容易地并行。以前的一些图聚类算法无法处理大规模和流图,因为它们是集中的,它们需要事先知道整个图,而不是增量的,或者它们会产生过多的计算开销。我们的算法的基本组成部分被称为图库采样。随着图的变化,我们在满足某些期望的属性(如簇的边界数或簇的大小)的同时,维护边缘的存储库样本。然后,我们将采样子图中的连接组件声明为原始图的聚类。我们在真实图上的实验表明,与离线算法相比,我们的方法不仅产生了非常好的聚类质量,而且获得了高数量级的吞吐量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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