Approximating the value function for continuous space reinforcement learning in robot control
Sebastian Buck, Michael Beetz, Thorsten Schmitt
- Year
- 2003
- Citations
- 9
Abstract
Many robot learning tasks are very difficult to solve: their state spaces are high dimensional, variables and command parameters are continuously valued, and system states are only partly observable. In this paper, we propose to learn a continuous space value function for reinforcement learning using neural networks trained from data of exploration runs. The learned function is guaranteed to be a lower bound for, and reproduces the characteristic shape of, the accurate value function. We apply our approach to two robot navigation tasks, discuss how to deal with possible problems occurring in practice, and assess its performance.
Keywords
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