Fast and Knowledge-Free Deep Learning for General Game Playing (Student Abstract)
Abstract
Adaptation of AlphaZero to General Game Playing uses Monte Carlo Tree Search, a value network, and attention layers to generate efficient models outperforming UCT for most games.
We develop a method of adapting the AlphaZero model to General Game Playing (GGP) that focuses on faster model generation and requires less knowledge to be extracted from the game rules. The dataset generation uses MCTS playing instead of self-play; only the value network is used, and attention layers replace the convolutional ones. This allows us to abandon any assumptions about the action space and board topology. We implement the method within the Regular Boardgames GGP system and show that we can build models outperforming the UCT baseline for most games efficiently.
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