Publication | Open Access
Submodular Inference of Diffusion Networks from Multiple Trees
41
Citations
23
References
2012
Year
EngineeringNetwork AnalysisSubmodular MaximizationNetwork DynamicDynamic NetworkSubmodular InferenceData ScienceInformation PropagationCombinatorial OptimizationStatisticsSocial Network AnalysisNetworksComputer ScienceNetwork TheoryHigh AccuracyNetwork ScienceGraph TheoryBusinessGovern DiffusionInformation DiffusionHigh-dimensional NetworkDiffusion-based ModelingLarge-scale Network
Diffusion and propagation of information, influence and diseases take place over increasingly larger networks. We observe when a node copies information, makes a decision or becomes infected but networks are often hidden or unobserved. Since networks are highly dynamic, changing and growing rapidly, we only observe a relatively small set of cascades before a network changes significantly. Scalable network inference based on a small cascade set is then necessary for understanding the rapidly evolving dynamics that govern diffusion. In this article, we develop a scalable approximation algorithm with provable near-optimal performance based on submodular maximization which achieves a high accuracy in such scenario, solving an open problem first introduced by Gomez-Rodriguez et al (2010). Experiments on synthetic and real diffusion data show that our algorithm in practice achieves an optimal trade-off between accuracy and running time.
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