The core message of this paper is to introduce the Multiplex Influence Maximization (Multi-IM) problem, which aims to maximize the influence spread of multiple interconnected information items in a social network, and to propose a Graph Bayesian Optimization framework (GBIM) to effectively solve this problem.
MIM-Reasoner introduces a novel framework combining reinforcement learning and probabilistic graphical models to maximize influence in multiplex networks.