首页> 外文会议>IEEE International Conference on Data Mining Workshops >Finding Hierarchical Communities in Complex Networks Using Influence-Guided Label Propagation
【24h】

Finding Hierarchical Communities in Complex Networks Using Influence-Guided Label Propagation

机译:使用影响力引导的标签传播在复杂网络中查找分层社区

获取原文

摘要

Communities play fundamental organizational and functional roles in various complex network systems. Community detection is an important challenge in network analysis. We approach community detection based on a Shared-Influence-Neighbor (SIN) similarity metric that measures the closeness of a pair of nodes in terms of their mutual influence and the common set of nodes they both influence. In this paper, we present two novel influence-guided label propagation (IGLP) algorithms. One is called IGLP-Weighted-Ensemble (IGLP-WE), in which each node adopts the label of the majority of its neighbors, weighted by the SIN similarity. This simple weighting scheme effectively resolves the significant stability issue in conventional label propagation algorithms. The other is called IGLP-Direct-Passing (IGLP-DP), in which the label is propagated directly from one node to its most similar neighbor step by step. This new label propagation method produces a deterministic partition and requires no convergent iterations. For both IGLP-WE and IGLP-DP, we regard the resultant partitioning as the initial configuration of the community structure. We then perform agglomerative hierarchical clustering to uncover the hierarchical communities at different scales using a new cluster-proximity measure. Extensive tests on a set of real-life networks and synthetic benchmarks demonstrate superior performance of our algorithms in terms of both quality and efficiency in undirected/directed and unweighted/weighted networks. Both IGLP-WE and IGLP-DP manifest promising scalability for large-scale networks.
机译:社区在各种复杂的网络系统中扮演着基本的组织和职能角色。社区检测是网络分析中的一项重要挑战。我们基于共享影响邻居(SIN)相似性度量来进行社区检测,该度量根据一对节点的相互影响和它们共同影响的一组公共节点来度量一对节点的紧密度。在本文中,我们提出了两种新颖的影响引导标签传播(IGLP)算法。一种称为IGLP加权集成(IGLP-WE),其中每个节点采用其大多数邻居的标签,并按SIN相似度进行加权。这种简单的加权方案有效地解决了常规标签传播算法中的重大稳定性问题。另一个称为IGLP-Direct-Passing(IGLP-DP),其中标签逐步从一个节点直接传播到其最相似的邻居。这种新的标签传播方法产生确定性的分区,并且不需要收敛的迭代。对于IGLP-WE和IGLP-DP,我们都将由此产生的分区视为社区结构的初始配置。然后,我们使用新的聚类接近度度量执行聚结的分层聚类,以发现不同规模的分层社区。在一组真实网络和综合基准上进行的广泛测试表明,在无向/有向和无权/加权网络中,我们的算法在质量和效率方面均具有出色的性能。 IGLP-WE和IGLP-DP都显示出可用于大型网络的可扩展性。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号