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Game artificial intelligence / Electronic games / Monte Carlo methods / Combinatorial game theory / Monte Carlo tree search / Stochastic simulation / Computer Go / UCT / Elo rating system / Receiver operating characteristic / Evaluation / Computer chess
Date: 2009-02-05 01:17:38
Game artificial intelligence
Electronic games
Monte Carlo methods
Combinatorial game theory
Monte Carlo tree search
Stochastic simulation
Computer Go
UCT
Elo rating system
Receiver operating characteristic
Evaluation
Computer chess

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