论文标题

在不断发展的网络中基于草图的社区发现

Sketch-based community detection in evolving networks

论文作者

Beckus, Andre, Atia, George K.

论文摘要

我们考虑了随时间变化网络中社区检测的方法。从本质上讲,这种方法保留了一个小的草图图,以捕获完整网络的每个快照中发现的基本社区结构。我们演示了如何使用草图来明确识别通常在网络演变过程中发生的六个关键社区事件:增长,收缩,合并,分裂,出生和死亡。基于这些检测技术,我们制定了一种社区检测算法,该算法可以处理同时显示所有过程的网络。基于草图的算法提供的一个优势是对大型网络的有效处理。尽管在完整图中检测事件可能在计算上可能很昂贵,但草图的小尺寸允许快速评估更改。在包含大小不成比例的群集的网络中发生了第二个优势。构造草图使每个群集都具有相等的表示,从而减少了小簇在估计中丢失的可能性。我们根据随机块模型提出了一种新的标准化基准,该基准建模了节点的添加和删除以及社区的出生和死亡。当与现有基准测试相结合时,该新的基准测试提供了一套全面的测试,包括所有六个社区活动。我们提供分析和一组数值结果,证明了我们在运行时间和处理小簇中的方法的优势。

We consider an approach for community detection in time-varying networks. At its core, this approach maintains a small sketch graph to capture the essential community structure found in each snapshot of the full network. We demonstrate how the sketch can be used to explicitly identify six key community events which typically occur during network evolution: growth, shrinkage, merging, splitting, birth and death. Based on these detection techniques, we formulate a community detection algorithm which can process a network concurrently exhibiting all processes. One advantage afforded by the sketch-based algorithm is the efficient handling of large networks. Whereas detecting events in the full graph may be computationally expensive, the small size of the sketch allows changes to be quickly assessed. A second advantage occurs in networks containing clusters of disproportionate size. The sketch is constructed such that there is equal representation of each cluster, thus reducing the possibility that the small clusters are lost in the estimate. We present a new standardized benchmark based on the stochastic block model which models the addition and deletion of nodes, as well as the birth and death of communities. When coupled with existing benchmarks, this new benchmark provides a comprehensive suite of tests encompassing all six community events. We provide analysis and a set of numerical results demonstrating the advantages of our approach both in run time and in the handling of small clusters.

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