A copy of this work was available on the public web and has been preserved in the Wayback Machine. The capture dates from 2016; you can also visit the original URL.
The file type is application/pdf
.
Reinforcement Learning to Adjust Parametrized Motor Primitives to New Situations
[chapter]
2014
Springer Tracts in Advanced Robotics
Humans manage to adapt learned movements very quickly to new situations by generalizing learned behaviors from similar situations. In contrast, robots currently often need to re-learn the complete movement. In this paper, we propose a method that learns to generalize parametrized motor plans by adapting a small set of global parameters, called meta-parameters. We employ reinforcement learning to learn the required meta-parameters to deal with the current situation, described by states. We
doi:10.1007/978-3-319-03194-1_5
fatcat:najkkiye7bewjksqhszj6gstqm