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Game artificial intelligence / Gaming / Mathematics / Leisure / Monte Carlo tree search / General game playing / Computer Go / Simulation / Game Description Language / Artificial intelligence / A* search algorithm / Search algorithm
Date: 2009-04-17 14:29:40
Game artificial intelligence
Gaming
Mathematics
Leisure
Monte Carlo tree search
General game playing
Computer Go
Simulation
Game Description Language
Artificial intelligence
A* search algorithm
Search algorithm

Simulation-Based Approach to General Game Playing Hilmar Finnsson and Yngvi Bj¨ornsson School of Computer Science Reykjav´ık University, Iceland {hif,yngvi}@ru.is

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