Title :
A flexible Q-relearning method to accelerate learning under the change of environments by reusing a portion of useful policies
Author :
Saito, Masanori ; Masuda, Kazuaki ; Kurihara, Kenzo
Author_Institution :
Fac. of Eng., Kanagawa Univ., Hiratsuka, Japan
Abstract :
We propose a relearning method for Q-learning algorithm, called “Q-relearning,” to accelerate learning under the change of environments by reusing a portion of useful policies. To deal with the problem that Q-learning algorithm can´t adapt to the change of environments efficiently, we developed an original Q-relearning method in the past study. However, there was little flexibility in choosing the portion to be reused. In this paper, we revise the Q-relearning method to permit any choice of the portion by adding the possibility to update the fixed Q-values under particular conditions. We show the effectiveness of the improved Q-relearning method by numerical experiments.
Keywords :
learning (artificial intelligence); Q-learning algorithm; environment change; flexible Q-relearning method; learning acceleration; numerical experiment; policy reuse; Acceleration; Educational institutions; Electronic mail; Learning; Machine learning; Machine learning algorithms; Strontium; Q-learning algorithm; machine learning; reinforcement learning; relearning;
Conference_Titel :
SICE Annual Conference (SICE), 2012 Proceedings of
Conference_Location :
Akita
Print_ISBN :
978-1-4673-2259-1