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Online Influence Maximization with Local Observations

机译:通过本地观察最大化在线影响力

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We consider an online influence maximization problem in which a decision maker selects a node among a large number of possibilities and places a piece of information at the node. The information then spreads in the network on a random set of edges. The goal of the decision maker is to reach as many nodes as possible, with the added complication that feedback is only available about the degree of the selected node. Our main result shows that such local observations can be sufficient for maximizing global influence in two broadly studied families of random graph models: stochastic block models and Chung–Lu models. With this insight, we propose a bandit algorithm that aims at maximizing local (and thus global) influence, and provide its theoretical analysis in both the subcritical and supercritical regimes of both considered models. Notably, our performance guarantees show no explicit dependence on the total number of nodes in the network, making our approach well-suited for large-scale applications.
机译:我们考虑一个在线影响最大化的问题,决策者在众多可能性中选择一个节点,并将一条信息放置在该节点上。然后,信息在网络的随机边缘上传播。决策者的目标是达到尽可能多的节点,但又增加了复杂性,即仅对所选节点的程度提供反馈。我们的主要结果表明,这样的局部观测值足以在两个广泛研究的随机图模型族中最大化全局影响力:随机块模型和Chung-Lu模型。有了这种见识,我们提出了一种旨在最大化本地(进而是全球)影响的匪徒算法,并在两种模型的亚临界和超临界状态下提供了理论分析。值得注意的是,我们的性能保证表明对网络中节点的总数没有明确的依赖,这使我们的方法非常适合大规模应用。

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