Title :
Reinforcement learning in multi-dimensional state-action space using random rectangular coarse coding and Gibbs sampling
Author_Institution :
Kyushu Univ., Fukuoka
fDate :
Oct. 29 2007-Nov. 2 2007
Abstract :
This paper presents a coarse coding technique and an action selection scheme for reinforcement learning (RL) in multi-dimensional and continuous state-action spaces following conventional and sound RL manners. RL in high-dimensional continuous domains includes two issues: One is a generalization problem for value-function approximation, and the other is a sampling problem for action selection over multi-dimensional continuous action spaces. The proposed method combines random rectangular coarse coding with an action selection scheme using Gibbs-sampling. The random rectangular coarse coding is very simple and quite suited both to approximate Q-functions in high-dimensional spaces and to execute Gibbs sampling. Gibbs sampling enables us to execute action selection following Boltsmann distribution over high-dimensional action space. The algorithm is demonstrated through Rod in maze problem and a redundant-arm reaching task comparing with conventional regular grid approaches.
Keywords :
learning (artificial intelligence); robots; sampling methods; Boltsmann distribution; Gibbs sampling; multidimensional state-action space; random rectangular coarse coding; redundant-arm reaching task; reinforcement learning; robots; value-function approximation; Approximation algorithms; Costs; Function approximation; Intelligent robots; Learning; Notice of Violation; Orbital robotics; Sampling methods; State-space methods; USA Councils;
Conference_Titel :
Intelligent Robots and Systems, 2007. IROS 2007. IEEE/RSJ International Conference on
Conference_Location :
San Diego, CA
Print_ISBN :
978-1-4244-0912-9
Electronic_ISBN :
978-1-4244-0912-9
DOI :
10.1109/IROS.2007.4399401