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Computational neuroscience / Artificial intelligence / Machine learning algorithms / Neuroscience / Applied mathematics / Artificial neural networks / Reinforcement learning / Q-learning / Convolutional neural network / Distributed artificial intelligence / Deep learning / Intelligent agent
Date: 2017-11-03 18:51:37
Computational neuroscience
Artificial intelligence
Machine learning algorithms
Neuroscience
Applied mathematics
Artificial neural networks
Reinforcement learning
Q-learning
Convolutional neural network
Distributed artificial intelligence
Deep learning
Intelligent agent

Cooperative Multi-Agent Control Using Deep Reinforcement Learning Jayesh K. Gupta Maxim Egorov

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