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Artificial intelligence / Machine learning algorithms / Statistical theory / Probability and statistics / Reinforcement learning / Q-learning / Partially observable Markov decision process / Entropy / OpenAI / Cross entropy / DQN
Date: 2016-12-09 10:01:25
Artificial intelligence
Machine learning algorithms
Statistical theory
Probability and statistics
Reinforcement learning
Q-learning
Partially observable Markov decision process
Entropy
OpenAI
Cross entropy
DQN

The Nuts and Bolts of Deep RL Research John Schulman December 9th, 2016 Outline

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