2024
DOI: 10.3390/electronics13153093
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Streamlined Deep Learning Models for Move Prediction in Go-Game

Ying-Chih Lin,
Yu-Chen Huang

Abstract: Due to the complexity of search space and move evaluation, the game of Go has been a long-standing challenge for artificial intelligence (AI) to achieve a high level of proficiency. It was not until DeepMind proposed the deep neural network and tree search algorithm AlphaGo in 2014 that an efficient learning algorithm was developed, marking a significant milestone in AI technology. In light of the key technologies in AI Computer Go, this work examines move prediction across different Go rankings and sophistica… Show more

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