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Monte Carlo method / Numerical analysis / Probabilistic complexity theory / Reinforcement learning / Markov decision process / Algorithm / Stochastic / Machine learning / Artificial intelligence / Statistics / Mathematics / Probability and statistics
Date: 2012-04-30 11:59:27
Monte Carlo method
Numerical analysis
Probabilistic complexity theory
Reinforcement learning
Markov decision process
Algorithm
Stochastic
Machine learning
Artificial intelligence
Statistics
Mathematics
Probability and statistics

Journal of Artificial Intelligence Research[removed]704 Submitted 09/11; published[removed]Learning to Win by Reading Manuals in a Monte-Carlo Framework

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