Title :
A Reinforcement Learning Algorithm for Continuous State Spaces using Multiple Fuzzy-ART Networks
Author :
Tateyama, Takeshi ; Kawata, Seiichi ; Shimomura, Yoshiki
Author_Institution :
Fac. of Syst. Design, Tokyo Metropolitan Univ.
Abstract :
This paper describes a new reinforcement learning system for unknown continuous state space environments. The purpose of our study is to divide the continuous state space to enable a reinforcement learning agent to perform a task well. Our method uses multiple fuzzy-ART (adaptive resonance theory) networks to divide a continuous state space. In our method, multiple reinforcement learning modules that use the fuzzy-ART networks as state recognizers learn concurrently, and the agent changes the state spaces for action selection from low resolution to high resolution in order to realize a good balance between the speed of the learning and its optimality. The results of the mobile robot simulation show the usefulness and efficiency of our learning system
Keywords :
ART neural nets; fuzzy neural nets; learning (artificial intelligence); state-space methods; adaptive resonance theory networks; mobile robot simulation; multiple fuzzy-ART networks; reinforcement learning algorithm; unknown continuous state space environments; Decision making; Electronic mail; Learning systems; Machine learning algorithms; Mobile robots; Resonance; Space technology; State-space methods; Fuzzy-ART; continuous state spaces; reinforcement learning; semi-Markov decision processes(SMDPs);
Conference_Titel :
SICE-ICASE, 2006. International Joint Conference
Conference_Location :
Busan
Print_ISBN :
89-950038-4-7
Electronic_ISBN :
89-950038-5-5
DOI :
10.1109/SICE.2006.315140