Generalized Beliefs for Cooperative AI

Self-play is a common paradigm for constructing solutions in Markov games that can yield optimal policies in collaborative settings. However, these policies often adopt highly-specialized conventions that make playing with a novel partner difficult. To address this, recent approaches rely on encodin...

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Veröffentlicht in:arXiv.org 2022-06
Hauptverfasser: Muglich, Darius, Zintgraf, Luisa, Schroeder de Witt, Christian, Whiteson, Shimon, Foerster, Jakob
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Zintgraf, Luisa
Schroeder de Witt, Christian
Whiteson, Shimon
Foerster, Jakob
description Self-play is a common paradigm for constructing solutions in Markov games that can yield optimal policies in collaborative settings. However, these policies often adopt highly-specialized conventions that make playing with a novel partner difficult. To address this, recent approaches rely on encoding symmetry and convention-awareness into policy training, but these require strong environmental assumptions and can complicate policy training. We therefore propose moving the learning of conventions to the belief space. Specifically, we propose a belief learning model that can maintain beliefs over rollouts of policies not seen at training time, and can thus decode and adapt to novel conventions at test time. We show how to leverage this model for both search and training of a best response over various pools of policies to greatly improve ad-hoc teamplay. We also show how our setup promotes explainability and interpretability of nuanced agent conventions.
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subjects Conventions
Learning
Policies
Testing time
Training
title Generalized Beliefs for Cooperative AI
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