Momentum-Based Policy Gradient Methods
Abstract
In the paper, we propose a class of efficient momentum-based policy gradient methods for the model-free reinforcement learning, which use adaptive learning rates and do not require any large batches. Specifically, we propose a fast important-sampling momentum-based policy gradient (IS-MBPG) method based on a new momentum-based variance reduced technique and the importance sampling technique. We also propose a fast Hessian-aided momentum-based policy gradient (HA-MBPG) method based on the momentum-based variance reduced technique and the Hessian-aided technique. Moreover, we prove that both the IS-MBPG and HA-MBPG methods reach the best known sample complexity of for finding an -stationary point of the non-concave performance function, which only require one trajectory at each iteration. In particular, we present a non-adaptive version of IS-MBPG method, i.e., IS-MBPG*, which also reaches the best known sample complexity of without any large batches. In the experiments, we apply four benchmark tasks to demonstrate the effectiveness of our algorithms.
Keywords
Cite
@article{arxiv.2007.06680,
title = {Momentum-Based Policy Gradient Methods},
author = {Feihu Huang and Shangqian Gao and Jian Pei and Heng Huang},
journal= {arXiv preprint arXiv:2007.06680},
year = {2020}
}
Comments
ICML 2020, 24 pages