Title :
Efficient data reuse in value function approximation
Author :
Hachiya, Hirotaka ; Akiyama, Takayuki ; Sugiyama, Masashi ; Peters, Jan
Author_Institution :
Dept. of Comput. Sci., Tokyo Inst. of Technol., Tokyo
fDate :
March 30 2009-April 2 2009
Abstract :
Off-policy reinforcement learning is aimed at efficiently using data samples gathered from a policy that is different from the currently optimized policy. A common approach is to use importance sampling techniques for compensating for the bias of value function estimators caused by the difference between the data-sampling policy and the target policy. However, existing off-policy methods often do not take the variance of the value function estimators explicitly into account and therefore their performance tends to be unstable. To cope with this problem, we propose using an adaptive importance sampling technique which allows us to actively control the trade-off between bias and variance. We further provide a method for optimally determining the trade-off parameter based on a variant of cross-validation. The usefulness of the proposed approach is demonstrated through simulated swing-up inverted-pendulum problem.
Keywords :
function approximation; learning (artificial intelligence); sampling methods; adaptive importance sampling technique; cross-validation variant; data reuse; data-sampling policy; off-policy reinforcement learning; target policy; trade-off parameter; value function approximation; value function estimator; Adaptive control; Approximation error; Computer science; Costs; Function approximation; Learning; Monte Carlo methods; Performance evaluation; Programmable control; Sampling methods;
Conference_Titel :
Adaptive Dynamic Programming and Reinforcement Learning, 2009. ADPRL '09. IEEE Symposium on
Conference_Location :
Nashville, TN
Print_ISBN :
978-1-4244-2761-1
DOI :
10.1109/ADPRL.2009.4927519