Learning agents' relations in interactive multiagent dynamic influence diagrams
Abstract: Solving interactive multiagent decision making problems is a challenging task since it needs to model how agents interact over time. From individual agents' perspective, interactive dynamic influence diagrams (I-DIDs) provide a general framework for sequential multiagent decision making in uncertain settings. Most of the current I-DID research focuses on the setting of n = 2 agents, which limits its general applications. This paper extends I-DIDs for n > 2 agents, which as expected increases the solution complexity due to the model space of other agents in the extended I-DIDs. We exploit data of agents' interactions to discover their relations thereby reducing the model complexity. We show preliminary results of the proposed techniques in one problem domain.
External IDs:doi:10.1007/978-3-319-20230-3_1
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