Node-coupling clustering approaches for link prediction

The novel node coupling clustering methods for link prediction are proposed.A new node coupling degree metric is proposed.The node coupling information and clustering information are used.Experimental evaluation about the effectiveness of our methods is presented. Due to the potential important information in real world networks, link prediction has become an interesting focus of different branches of science. Nevertheless, in "big data" era, link prediction faces significant challenges, such as how to predict the massive data efficiently and accurately. In this paper, we propose two novel node-coupling clustering approaches and their extensions for link prediction, which combine the coupling degrees of the common neighbor nodes of a predicted node-pair with cluster geometries of nodes. We then present an experimental evaluation to compare the prediction accuracy and effectiveness between our approaches and the representative existing methods on two synthetic datasets and six real world datasets. The experimental results show our approaches outperform the existing methods.

[1]  David Liben-Nowell,et al.  The link-prediction problem for social networks , 2007 .

[2]  Lada A. Adamic,et al.  The political blogosphere and the 2004 U.S. election: divided they blog , 2005, LinkKDD '05.

[3]  Stanford,et al.  Learning to Discover Social Circles in Ego Networks , 2012 .

[4]  Christos Faloutsos,et al.  Graph evolution: Densification and shrinking diameters , 2006, TKDD.

[5]  Zhen Liu,et al.  Link prediction in complex networks: A local naïve Bayes model , 2011, ArXiv.

[6]  Katarzyna Musial,et al.  Creation and growth of online social network , 2013, World Wide Web.

[7]  Duncan J. Watts,et al.  Collective dynamics of ‘small-world’ networks , 1998, Nature.

[8]  Padhraic Smyth,et al.  Prediction and ranking algorithms for event-based network data , 2005, SKDD.

[9]  M. Newman,et al.  Hierarchical structure and the prediction of missing links in networks , 2008, Nature.

[10]  Katarzyna Musial,et al.  Social networks on the Internet , 2012, World Wide Web.

[11]  Jinhui Xu,et al.  Link Prediction Based on Clustering Coefficient , 2014 .

[12]  Linyuan Lü,et al.  Predicting missing links via local information , 2009, 0901.0553.

[13]  Roger Guimerà,et al.  Missing and spurious interactions and the reconstruction of complex networks , 2009, Proceedings of the National Academy of Sciences.

[14]  Lise Getoor,et al.  Link mining: a new data mining challenge , 2003, SKDD.

[15]  Ben Taskar,et al.  Link Prediction in Relational Data , 2003, NIPS.

[16]  Wu Bin Link Prediction Based on Node Similarity , 2011 .

[17]  Linyuan Lu,et al.  Link Prediction in Complex Networks: A Survey , 2010, ArXiv.

[18]  Lise Getoor,et al.  Link mining: a survey , 2005, SKDD.

[19]  Guangyan Huang,et al.  A Clustering-based Link Prediction Method in Social Networks , 2014, ICCS.

[20]  Seymour Geisser,et al.  8. Predictive Inference: An Introduction , 1995 .

[21]  Linyuan Lu,et al.  Link prediction based on local random walk , 2010, 1001.2467.

[22]  Pablo M. Gleiser,et al.  Community Structure in Jazz , 2003, Adv. Complex Syst..

[23]  Mohammad Al Hasan,et al.  Link prediction using supervised learning , 2006 .

[24]  W. Zachary,et al.  An Information Flow Model for Conflict and Fission in Small Groups , 1977, Journal of Anthropological Research.