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      Team Behavior in Interactive Dynamic Influence Diagrams with Applications to Ad Hoc Teams

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          Abstract

          Planning for ad hoc teamwork is challenging because it involves agents collaborating without any prior coordination or communication. The focus is on principled methods for a single agent to cooperate with others. This motivates investigating the ad hoc teamwork problem in the context of individual decision making frameworks. However, individual decision making in multiagent settings faces the task of having to reason about other agents' actions, which in turn involves reasoning about others. An established approximation that operationalizes this approach is to bound the infinite nesting from below by introducing level 0 models. We show that a consequence of the finitely-nested modeling is that we may not obtain optimal team solutions in cooperative settings. We address this limitation by including models at level 0 whose solutions involve learning. We demonstrate that the learning integrated into planning in the context of interactive dynamic influence diagrams facilitates optimal team behavior, and is applicable to ad hoc teamwork.

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          Author and article information

          Journal
          01 September 2014
          Article
          1409.0302
          40dd4b89-5a19-434a-b5d1-add7365f39be

          http://arxiv.org/licenses/nonexclusive-distrib/1.0/

          History
          Custom metadata
          68T37
          8 pages, Appeared in the MSDM Workshop at AAMAS 2014, Extended Abstract version appeared at AAMAS 2014, France
          cs.MA cs.AI

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