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Ego-Splitting Framework: from Non-Overlapping to Overlapping Clusters

机译:自我分裂框架:从非重叠到重叠群集

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摘要

We propose ego-splitting, a new framework for detecting clusters in complex networks which leverage the local structures known as ego-nets (i.e. the subgraph induced by the neighborhood of each node) to de-couple overlapping clusters. Ego-splitting is a highly scalable and flexible framework, with provable theoretical guarantees, that reduces the complex overlapping clustering problem to a simpler and more amenable non-overlapping (partitioning) problem. We can scale community detection to graphs with tens of billions of edges and outperform previous solutions based on ego-nets analysis. More precisely, our framework works in two steps: a local egonet analysis phase, and a global graph partitioning phase. In the local step, we first partition the nodes' ego-nets using a partitioning algorithm. We then use the computed clusters to split each node into its persona nodes that represent the instantiations of the node in its communities. Finally, in the global step, we partition the newly created graph to obtain an overlapping clustering of the original graph.
机译:我们提出了自我分配,一种用于检测复杂网络中的集群的新框架,该框架利用称为EGO-网的局部结构(即每个节点的邻域诱导的子图)到脱耦的重叠群集。自我分离是一种高度可扩展且灵活的框架,具有可提供的理论保证,可将复杂的重叠聚类问题减少到更简单,更可用的非重叠(分区)问题。我们可以将社区检测扩展到具有数十亿边缘的图表和基于EGO-Nets分析的先前解决方案。更准确地说,我们的框架分为两个步骤:本地Egonet分析阶段和全局图分区阶段。在本地步骤中,我们首先使用分区算法分区节点的EGO-网。然后,我们使用计算的群集将每个节点拆分到其角色节点,该节点表示其社区中节点的实例化。最后,在全局步骤中,我们分区新创建的图形以获取原始图形的重叠群集。

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