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Neuroscience / Artificial intelligence / Machine learning / Machine learning algorithms / Computational neuroscience / Artificial neural networks / Q-learning / Reinforcement learning / University of Cape Town / Monte Carlo tree search / Sepp Hochreiter / Convolutional neural network
Date: 2016-04-22 16:33:09
Neuroscience
Artificial intelligence
Machine learning
Machine learning algorithms
Computational neuroscience
Artificial neural networks
Q-learning
Reinforcement learning
University of Cape Town
Monte Carlo tree search
Sepp Hochreiter
Convolutional neural network

Deep Learning for Reward Design to Improve Monte Carlo Tree Search in ATARI Games Xiaoxiao Guo, Satinder Singh, Richard Lewis, Honglak Lee University of Michigan, Ann Arbor {guoxiao,baveja,rickl,honglak}@umich.edu

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