会议专题

Weight-discounted Symmetrization in Clustering Directed Graphs

  An increasing attention has been recently devoted to uncovering community structure in directed graphs which widely exist in real-world complex networks such as social networks,citation networks,World Wide Web,email networks,etc.A two-stage framework for detecting clusters is an effective way for clustering directed graphs while the first stage is to symmetrize the directed graph using some similarity measures.Any state-of-the-art clustering algorithms for undirected graphs can be leveraged in the second stage.Hence,both stages are important to the effectiveness of the clustering result.However,existing symmetrization methods only consider about the direction of edges but ignore the weights of nodes.In this paper,we first attempt to connect link analysis in directed graph clustering.This connection not only takes into consideration the directionality of edges but also uses node ranking scores such as authority and hub score to explicitly capture in-link and out-link similarity.We also demonstrate the generality of our proposed method by showing that existing state-of-the-art symmetrization methods can be derived from our method.Empirical validation shows that our method can find communities effectively in real world networks.

clustering directed graph graph transformations community detection

Bin He Hui Liu Xianghui Zhao Zefeng Li

China Information Technology Security Evaluation Center, Beijing, China ;School of Information, Renm China Information Technology Security Evaluation Center, Beijing, China

国际会议

2012 2nd International Conference on Computer and Information Applications(ICCIA2012)(2012第二届计算机和信息应用国际会议)

太原

英文

616-622

2012-12-08(万方平台首次上网日期,不代表论文的发表时间)