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Cognitive science / Cognition / Artificial intelligence / Machine learning / Belief revision / Reinforcement learning / Temporal difference learning / Q-learning / Feature selection / Supervised learning / Proto-value functions / Action selection
Date: 2016-07-12 12:05:04
Cognitive science
Cognition
Artificial intelligence
Machine learning
Belief revision
Reinforcement learning
Temporal difference learning
Q-learning
Feature selection
Supervised learning
Proto-value functions
Action selection

Evolutionary Feature Evaluation for Online Reinforcement Learning

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