4.4 Article

Least-Cost Influence Maximization on Social Networks

期刊

INFORMS JOURNAL ON COMPUTING
卷 32, 期 2, 页码 289-302

出版社

INFORMS
DOI: 10.1287/ijoc.2019.0886

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social networks; influence maximization; complexity; integer programming; strong formulation; greedy algorithm

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Viral-marketing strategies are of significant interest in the online economy. Roughly, in these problems, one seeks to identify which individuals to strategically target in a social network so that a given proportion of the network is influenced at minimum cost. Earlier literature has focused primarily on problems where a fixed inducement is provided to those targeted. In contrast, resembling the practical viral-marketing setting, we consider this problem where one is allowed to partially influence (by the use of monetary inducements) those selected for targeting. We thus focus on the least-cost influence problem (LCIP): an influence-maximization problem where the goal is to find the minimum total amount of inducements (individuals to target and associated tailored incentive) required to influence a given proportion of the population. Motivated by the desire to develop a better understanding of fundamental problems in social-network analytics, we seek to develop (exact) optimization approaches for the LCIP. Our paper makes several contributions, including (i) showing that the problem is NP-complete in general as well as under a wide variety of special conditions; (ii) providing an influence greedy algorithm to solve the problem polynomially on trees, where we require 100% adoption and all neighbors exert equal influence on a node; and (iii) a totally unimodular formulation for this tree case.

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