A Review of Artificial Intelligence for Games

作者: Xueman Fan , J. Wu , L. Tian

DOI: 10.1007/978-981-15-0187-6_34

关键词:

摘要: Artificial Intelligence (AI) has made great progress in recent years, and it is unlikely to become less important the future. Besides, would also be an understatement that game greatly promoted development of AI. Game AI a remarkable improvement about fifteen years. In this paper, we present academic perspective for games. A number basic methods usually used games are summarized discussed, such as ad hoc authoring, tree search, evolutionary computation, machine learning. Through analysis, can concluded current not smart enough, which strongly calls supports coming from new techniques.

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