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Knowledge / Decision theory / Utility / Artificial intelligence / Technology / Intelligent agent / Reinforcement learning / Science / Cybernetics
Date: 2013-06-21 09:17:24
Knowledge
Decision theory
Utility
Artificial intelligence
Technology
Intelligent agent
Reinforcement learning
Science
Cybernetics

Learning What to Value Daniel Dewey Machine Intelligence Research Institute Abstract. We examine ultraintelligent reinforcement learning agents. Reinforcement learning can only be used in the real world to define agents

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