2023 IEEE Conference on Games (CoG) 2023
DOI: 10.1109/cog57401.2023.10333223
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PyTAG: Challenges and Opportunities for Reinforcement Learning in Tabletop Games

Martin Balla,
George E.M. Long,
Dominik Jeurissen
et al.

Abstract: In recent years, Game AI research has made important breakthroughs using Reinforcement Learning (RL). Despite this, RL for modern tabletop games has gained little to no attention, even when they offer a range of unique challenges compared to video games. To bridge this gap, we introduce PyTAG, a Python API for interacting with the Tabletop Games framework (TAG). TAG contains a growing set of more than 20 modern tabletop games, with a common API for AI agents. We present techniques for training RL agents in the… Show more

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