Clear the Fog: Combat Value Assessment in Incomplete Information Games with Convolutional Encoder-Decoders

30 Nov 2018Hyungu KahngYonghyun JeongYoon Sang ChoGonie AhnYoung Joon ParkUk JoHankyu LeeHyungrok DoJunseung LeeHyunjin ChoiIljoo YoonHyunjae LeeDaehun JunChanghyeon BaeSeoung Bum Kim

StarCraft, one of the most popular real-time strategy games, is a compelling environment for artificial intelligence research for both micro-level unit control and macro-level strategic decision making. In this study, we address an eminent problem concerning macro-level decision making, known as the 'fog-of-war', which rises naturally from the fact that information regarding the opponent's state is always provided in the incomplete form... (read more)

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