Publication | Closed Access
Influence Maximization over Large-Scale Social Networks
99
Citations
41
References
2014
Year
Unknown Venue
EngineeringMaximal Social InfluenceInfluence MaximizationNetwork AnalysisSocial InfluenceCommunicationComputational Social ScienceViral MarketingSocial MediaData ScienceInformation PropagationSocial Network AnalysisSocial Influence ModelsSocial Network AggregationNetwork ScienceSocial ComputingInformation DiffusionArtsInfluence Model
Information diffusion in social networks is emerging as a promising solution to successful viral marketing, which relies on the effective and efficient identification of a set of nodes with the maximal social influence. While there are tremendous efforts on the development of social influence models and algorithms for social influence maximization, limited progress has been made in terms of designing both efficient and effective algorithms for finding a set of nodes with the maximal social influence. To this end, in this paper, we provide a bounded linear approach for influence computation and influence maximization. Specifically, we first adopt a linear and tractable approach to describe the influence propagation. Then, we develop a quantitative metric, named Group-PageRank, to quickly estimate the upper bound of the social influence based on this linear approach. More importantly, we provide two algorithms Linear and Bound, which exploit the linear approach and Group-PageRank for social influence maximization. Finally, extensive experimental results demonstrate that (a) the adopted linear approach has a close relationship with traditional models and Group-PageRank provides a good estimation of social influence; (b) Linear and Bound can quickly find a set of the most influential nodes and both of them are scalable for large-scale social networks.
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