Large-Scale Multi-objective Influence Maximisation with Network Downscaling

PARALLEL PROBLEM SOLVING FROM NATURE - PPSN XVII, PPSN 2022, PT II(2022)

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摘要
Finding the most influential nodes in a network is a computationally hard problem with several possible applications in various kinds of network-based problems. While several methods have been proposed for tackling the influence maximisation (IM) problem, their run-time typically scales poorly when the network size increases. Here, we propose an original method, based on network downscaling, that allows a multi-objective evolutionary algorithm (MOEA) to solve the IM problem on a reduced scale network, while preserving the relevant properties of the original network. The downscaled solution is then upscaled to the original network, using a mechanism based on centrality metrics such as PageRank. Our results on eight large networks (including two with similar to 50k nodes) demonstrate the effectiveness of the proposed method with a more than 10-fold runtime gain compared to the time needed on the original network, and an up to 82% time reduction compared to CELF.
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关键词
Social network, Influence maximisation, Complex network, Genetic algorithm, Multi-objective optimisation
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