Publication | Open Access
Influence Maximization in Continuous Time Diffusion Networks
101
Citations
22
References
2012
Year
EngineeringInfluence MaximizationSource NodesNetwork AnalysisNetwork DynamicDynamic NetworkComputational Social ScienceData ScienceInformation PropagationCombinatorial OptimizationSocial Network AnalysisComputer ScienceDiffusion NetworkNetwork ScienceGraph TheoryNetwork AlgorithmDiffusion ProcessBusinessInformation DiffusionInfluence Model
The problem of finding the optimal set of source nodes in a diffusion network that maximizes the spread of information, influence, and diseases in a limited amount of time depends dramatically on the underlying temporal dynamics of the network. However, this still remains largely unexplored to date. To this end, given a network and its temporal dynamics, we first describe how continuous time Markov chains allow us to analytically compute the average total number of nodes reached by a diffusion process starting in a set of source nodes. We then show that selecting the set of most influential source nodes in the continuous time influence maximization problem is NP-hard and develop an efficient approximation algorithm with provable near-optimal performance. Experiments on synthetic and real diffusion networks show that our algorithm outperforms other state of the art algorithms by at least ~20% and is robust across different network topologies.
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