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Artificial intelligence / Computational neuroscience / Backgammon / Econometrics / Network architecture / TD-Gammon / Reinforcement learning / Backpropagation / Minimax / Neural networks / Machine learning / Games
Date: 2004-05-10 10:00:05
Artificial intelligence
Computational neuroscience
Backgammon
Econometrics
Network architecture
TD-Gammon
Reinforcement learning
Backpropagation
Minimax
Neural networks
Machine learning
Games

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