Fast and frugal targeting with incentives
Theoretical Computer Science(2020)
摘要
A widely studied model of influence diffusion in social networks represents the network as a graph G=(V,E), with an integer influence threshold t(v) for each node, and the diffusion process as follows: Initially the members of a chosen set S⊆V are influenced and, during each subsequent round, the set of influenced nodes is augmented by including every new node v that has at least t(v) previously influenced neighbours. The general problem is to find a small initial set that influences the whole network. In this paper we extend this model by using incentives to reduce the thresholds of some nodes. The goal is to minimize the total amount of the incentive required to ensure that the information diffusion process terminates within a given number of rounds λ. The problem is hard to approximate in general networks. We present optimal polynomial-time algorithms for paths, cycles, trees, and complete networks for any λ. For the special case λ=1, we present a polynomial-time algorithm with a logarithmic approximation guarantee for any network.
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关键词
Social networks,Algorithms,Information diffusion
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