Interactive learning of temporal features for control. Shaping Policies and state representations from human feedback
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2020Metadata
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Pérez Dattari, Rodrigo
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Interactive learning of temporal features for control. Shaping Policies and state representations from human feedback
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Abstract
Current ongoing industry revolution demands more flexible products, including robots in household environments and medium-scale factories. Such robots should be able to adapt to new conditions and environments and be programmed with ease. As an example, let us suppose that there are robot manipulators working on an industrial production line and that they need to perform a new task. If these robots were hard coded, it could take days to adapt them to the new settings, which would stop production at the factory. Robots that non-expert humans could easily program would speed up the process considerably.
Patrocinador
Netherlands Organization for Scientific Research project Cognitive Robots for Flexible Agro-Food Technology
P17-01
European Research Council (ERC)
804907
Chile's National Fund for Scientific and Technological Development project (FONDECYT)
1201170
Chile's Associative Research Program of the National Research and Development Agency (ANID/PIA)
AFB180004
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Artículo de publicación ISI Artículo de publicación SCOPUS
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IEEE Robotics & Automation Magazine. Vol. 27, No. 2 , (2020): 46-54
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