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Dynamic programming / Stochastic control / Markov models / Partially observable Markov decision process / Reinforcement learning / Markov decision process / Automated planning and scheduling / Action selection / Neurorobotics / Statistics / Markov processes / Artificial intelligence
Date: 2014-01-13 11:29:10
Dynamic programming
Stochastic control
Markov models
Partially observable Markov decision process
Reinforcement learning
Markov decision process
Automated planning and scheduling
Action selection
Neurorobotics
Statistics
Markov processes
Artificial intelligence

ORIGINAL RESEARCH ARTICLE published: 06 January 2014 doi: fnbotNEUROROBOTICS

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