Incremental Influence Maximization for Dynamic Social Networks

Influence maximization is one fundamental and important problem to identify a set of most influential individuals to develop effective viral marketing strategies in social network. Most existing studies mainly focus on designing efficient algorithms or heuristics to find Top-K influential individuals for static network. However, when the network is evolving over time, the static algorithms have to be re-executed which will incur tremendous execution time. In this paper, an incremental algorithm DIM is proposed which can efficiently identify the Top-K influential individuals in dynamic social network based on the previous information instead of calculating from scratch. DIM is designed for Linear Threshold Model and it consists of two phases: initial seeding and seeds updating. In order to further reduce the running time, two pruning strategies are designed for the seeds updating phase. We carried out extensive experiments on real dynamic social network and the experimental results demonstrate that our algorithms could achieve good performance in terms of influence spread and significantly outperform those traditional static algorithms with respect to running time.

[1]  Jie Tang,et al.  Influence Maximization in Dynamic Social Networks , 2013, 2013 IEEE 13th International Conference on Data Mining.

[2]  Matthew Richardson,et al.  Mining knowledge-sharing sites for viral marketing , 2002, KDD.

[3]  Jian Pei,et al.  Continuous Influence Maximization: What Discounts Should We Offer to Social Network Users? , 2016, SIGMOD Conference.

[4]  Jinha Kim,et al.  Scalable and parallelizable processing of influence maximization for large-scale social networks? , 2013, 2013 IEEE 29th International Conference on Data Engineering (ICDE).

[5]  Weili Wu,et al.  Influence-based community partition for social networks , 2014, Computational Social Networks.

[6]  Liquan Xiao,et al.  On the Shoulders of Giants: Incremental Influence Maximization in Evolving Social Networks , 2015, Complex..

[7]  Wei Chen,et al.  Scalable influence maximization for prevalent viral marketing in large-scale social networks , 2010, KDD.

[8]  Laks V. S. Lakshmanan,et al.  SIMPATH: An Efficient Algorithm for Influence Maximization under the Linear Threshold Model , 2011, 2011 IEEE 11th International Conference on Data Mining.

[9]  G. Milner,et al.  AIA : Maximizing the Spread of Influence through a Social Network , 2015 .

[10]  Weili Wu,et al.  Efficient influence spread estimation for influence maximization under the linear threshold model , 2014, Computational Social Networks.

[11]  Éva Tardos,et al.  Maximizing the Spread of Influence through a Social Network , 2015, Theory Comput..

[12]  Weiming Hu,et al.  Influence Maximization in Human-Intervened Social Networks , 2015, SocInf@IJCAI.

[13]  Ning Zhang,et al.  Time-Critical Influence Maximization in Social Networks with Time-Delayed Diffusion Process , 2012, AAAI.

[14]  Shaojie Tang,et al.  Adaptive Influence Maximization in Dynamic Social Networks , 2015, IEEE/ACM Transactions on Networking.

[15]  Andreas Krause,et al.  Cost-effective outbreak detection in networks , 2007, KDD '07.