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Training a robot via human feedback | MIT Media Lab

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23 January 2015



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“In this MIT Media Lab “Labcast” we describe work by Postdoctoral Researcher Brad Knox to allow even technically unskilled users to train our robots. The system, called TAMER, allows users to give the robot positive and negative reinforcement, much like you would train a pet!”

Source: www.youtube.com

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John Payne





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