Publication | Open Access
Robust Influence Maximization
78
Citations
32
References
2016
Year
Unknown Venue
EngineeringNetwork AnalysisSocial InfluenceSocial NetworkRobust Influence MaximizationComputational Social ScienceData ScienceRobust StatisticStatisticsMajority InfluenceSocial Network AnalysisKnowledge DiscoveryJoint InfluenceComputer ScienceSocial Network AggregationCommunity StructureNetwork ScienceGraph TheoryBusinessInfluence Maximization ProblemInformation DiffusionInfluence Model
Uncertainty about models and data is ubiquitous in the computational social sciences, and it creates a need for robust social network algorithms, which can simultaneously provide guarantees across a spectrum of models and parameter settings. We begin an investigation into this broad domain by studying robust algorithms for the Influence Maximization problem, in which the goal is to identify a set of k nodes in a social network whose joint influence on the network is maximized. We define a Robust Influence Maximization framework wherein an algorithm is presented with a set of influence functions, typically derived from different influence models or different parameter settings for the same model. The different parameter settings could be derived from observed cascades on different topics, under different conditions, or at different times. The algorithm's goal is to identify a set of k nodes who are simultaneously influential for all influence functions, compared to the (function-specific) optimum solutions.
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