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 learning strategic network emergence game


Learning Strategic Network Emergence Games

Neural Information Processing Systems

Real-world networks, especially the ones that emerge due to actions of animate agents (e.g.


Learning Strategic Network Emergence Games

Neural Information Processing Systems

Real-world networks, especially the ones that emerge due to actions of animate agents (e.g. Learning approaches built to capture these strategic insights would gain interpretability and flexibility benefits that are required to generalize beyond observations. To this end, we consider a game-theoretic formalism of network emergence that accounts for the underlying strategic mechanisms and take it to the observed data. We propose MINE (Multi-agent Inverse models of Network Emergence mechanism), a new learning framework that solves Markov-Perfect network emergence games using multi-agent inverse reinforcement learning. MINE jointly discovers agents' strategy profiles in the form of network emergence policy and the latent payoff mechanism in the form of learned reward function.