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AI in Games: Techniques, Challenges and Opportunities

2021-11-15 09:35:53
Qiyue Yin, Jun Yang, Wancheng Ni, Bin Liang, Kaiqi Huang

Abstract

With breakthrough of AlphaGo, AI in human-computer game has become a very hot topic attracting researchers all around the world, which usually serves as an effective standard for testing artificial intelligence. Various game AI systems (AIs) have been developed such as Libratus, OpenAI Five and AlphaStar, beating professional human players. In this paper, we survey recent successful game AIs, covering board game AIs, card game AIs, first-person shooting game AIs and real time strategy game AIs. Through this survey, we 1) compare the main difficulties among different kinds of games for the intelligent decision making field ; 2) illustrate the mainstream frameworks and techniques for developing professional level AIs; 3) raise the challenges or drawbacks in the current AIs for intelligent decision making; and 4) try to propose future trends in the games and intelligent decision making techniques. Finally, we hope this brief review can provide an introduction for beginners, inspire insights for researchers in the filed of AI in games.

Abstract (translated)

URL

https://arxiv.org/abs/2111.07631

PDF

https://arxiv.org/pdf/2111.07631.pdf


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