Negotiating team formation using deep reinforcement learning

作者:

摘要

When autonomous agents interact in the same environment, they must often cooperate to achieve their goals. One way for agents to cooperate effectively is to form a team, make a binding agreement on a joint plan, and execute it. However, when agents are self-interested, the gains from team formation must be allocated appropriately to incentivize agreement. Various approaches for multi-agent negotiation have been proposed, but typically only work for particular negotiation protocols. More general methods usually require human input or domain-specific data, and so do not scale. To address this, we propose a framework for training agents to negotiate and form teams using deep reinforcement learning. Importantly, our method makes no assumptions about the specific negotiation protocol, and is instead completely experience driven. We evaluate our approach on both non-spatial and spatially extended team-formation negotiation environments, demonstrating that our agents beat hand-crafted bots and reach negotiation outcomes consistent with fair solutions predicted by cooperative game theory. Additionally, we investigate how the physical location of agents influences negotiation outcomes.

论文关键词:Multi-agent systems,Team formation,Coalition formation,Reinforcement learning,Deep learning,Cooperative games,Shapley value

论文评审过程:Received 28 January 2019, Revised 30 June 2020, Accepted 14 July 2020, Available online 25 July 2020, Version of Record 4 August 2020.

论文官网地址:https://doi.org/10.1016/j.artint.2020.103356