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Please be an Influencer?: Contingency-Aware Influence Maximization

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Publication date10/07/2018
Host publicationAAMAS '18 Proceedings of the 17th International Conference on Autonomous Agents and MultiAgent Systems
EditorsM. Dastani, G. Sukthankar, E. Andre, S. Koenig
Place of PublicationRichland SC
PublisherInternational Foundation for Autonomous Agents and Multiagent Systems
Pages1423-1421
Number of pages9
ISBN (print)9781450356497
<mark>Original language</mark>English
Event17th International Conference on Autonomous Agents and Multi-agent Systems - Stockholm, Sweden
Duration: 10/07/201815/07/2018
Conference number: 17

Conference

Conference17th International Conference on Autonomous Agents and Multi-agent Systems
Abbreviated titleAAMAS 2018
Country/TerritorySweden
CityStockholm
Period10/07/1815/07/18

Conference

Conference17th International Conference on Autonomous Agents and Multi-agent Systems
Abbreviated titleAAMAS 2018
Country/TerritorySweden
CityStockholm
Period10/07/1815/07/18

Abstract

Most previous work on influence maximization in social networks assumes that the chosen influencers (or seed nodes) can be influenced with certainty (i.e., with no contingencies). In this paper, we focus on using influence maximization in public health domains for assisting low-resource communities, where contingencies are common. It is very difficult in these domains to ensure that the seed nodes are influenced, as influencing them entails contacting/convincing
them to attend training sessions, which may not always be possible. Unfortunately, previous state-of-the-art algorithms for influence maximization are unusable in this setting. This paper tackles this challenge via the following four contributions: (i) we propose the Contingency Aware Influence Maximization problem and analyze it theoretically; (ii) we cast this problem as a Partially Observable Markov Decision Process and propose CAIMS (a novel POMDP planner) to solve it, which leverages a natural action space factorization associated with real-world social networks;
and (iii) we provide extensive simulation results to compare CAIMS with existing state-of-the-art influence maximization algorithms. Finally, (iv) we provide results from a real-world feasibility trial
conducted to evaluate CAIMS, in which key influencers in homeless youth social networks were influenced in order to spread awareness about HIV.