Publication | Closed Access
StaticGreedy
137
Citations
25
References
2013
Year
Unknown Venue
Influence Maximization AlgorithmsComputational Social ScienceViral MarketingSocial MediaNetwork ScienceData ScienceEngineeringInfluence MaximizationNetwork AnalysisSocial InfluenceInformation DiffusionComputer ScienceRumor SpreadingInformation PropagationHigh ScalabilityInfluence ModelSocial Network Analysis
Influence maximization, defined as a problem of finding a set of seed nodes to trigger a maximized spread of influence, is crucial to viral marketing on social networks. For practical viral marketing on large scale social networks, it is required that influence maximization algorithms should have both guaranteed accuracy and high scalability. However, existing algorithms suffer a scalability-accuracy dilemma: conventional greedy algorithms guarantee the accuracy with expensive computation, while the scalable heuristic algorithms suffer from unstable accuracy
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