Exception-Tolerant Hierarchical Knowledge Bases for Forward Model Learning

IEEE Transactions on Games(2021)

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摘要
This article provides an overview of the recently proposed forward model approximation framework for learning games of the general video game artificial intelligence (GVGAI) framework. In contrast to other general game-playing algorithms, the proposed agent model does not need a full description of the game but can learn the game's rules by observing game state transitions. Based on hierarchical k...
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关键词
Games,Analytical models,Context modeling,Knowledge based systems,Training,Reinforcement learning,Approximation algorithms
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