| Literature DB >> 24995917 |
Voot Tangkaratt1, Syogo Mori2, Tingting Zhao3, Jun Morimoto4, Masashi Sugiyama5.
Abstract
The goal of reinforcement learning (RL) is to let an agent learn an optimal control policy in an unknown environment so that future expected rewards are maximized. The model-free RL approach directly learns the policy based on data samples. Although using many samples tends to improve the accuracy of policy learning, collecting a large number of samples is often expensive in practice. On the other hand, the model-based RL approach first estimates the transition model of the environment and then learns the policy based on the estimated transition model. Thus, if the transition model is accurately learned from a small amount of data, the model-based approach is a promising alternative to the model-free approach. In this paper, we propose a novel model-based RL method by combining a recently proposed model-free policy search method called policy gradients with parameter-based exploration and the state-of-the-art transition model estimator called least-squares conditional density estimation. Through experiments, we demonstrate the practical usefulness of the proposed method.Keywords: Conditional density estimation; Reinforcement learning; Transition model estimation
Mesh:
Year: 2014 PMID: 24995917 DOI: 10.1016/j.neunet.2014.06.006
Source DB: PubMed Journal: Neural Netw ISSN: 0893-6080