Fuzzy modeling in game AI. (English) Zbl 1491.68233

Summary: In this survey, we outline the impact fuzzy set theory had on artificial intelligence in games. Therefore, we will review fuzzy set related achievements in research and industrial applications alike. We will specifically address such topics as fuzzy game theory, fuzzy data analysis for real games, and the development of game AI agents using fuzzy models.


68T37 Reasoning under uncertainty in the context of artificial intelligence
68T42 Agent technology and artificial intelligence
91A86 Game theory and fuzziness
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