Better Bounds on the Adaptivity Gap of Influence Maximization under Full-adoption Feedback
Gianlorenzo D'Angelo, Debashmita Poddar, Cosimo Vinci

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Abstract
In the influence maximization (IM) problem, we are given a social network and a budget , and we look for a set of nodes in the network, called seeds, that maximize the expected number of nodes that are reached by an influence cascade generated by the seeds, according to some stochastic model for influence diffusion. In this paper, we study the adaptive IM, where the nodes are selected sequentially one by one, and the decision on the th seed can be based on the observed cascade produced by the first seeds. We focus on the full-adoption feedback in which we can observe the entire cascade of each previously selected seed and on the independent cascade model where each edge is associated with an independent probability of diffusing influence. Our main result is the first sub-linear upper bound that holds for any graph. Specifically, we show that the adaptivity gap is…
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TopicsComplex Network Analysis Techniques · Opinion Dynamics and Social Influence · Game Theory and Applications
