GEP-PG: Decoupling Exploration and Exploitation in Deep Reinforcement Learning Algorithms
Abstract
In continuous action domains, standard deep reinforcement learning algorithms like DDPG suffer from inefficient exploration when facing sparse or deceptive reward problems. Conversely, evolutionary and developmental methods focusing on exploration like Novelty Search, Quality-Diversity or Goal Exploration Processes explore more robustly but are less efficient at fine-tuning policies using gradient-descent. In this paper, we present the GEP-PG approach, taking the best of both worlds by sequentially combining a Goal Exploration Process and two variants of DDPG . We study the learning performance of these components and their combination on a low dimensional deceptive reward problem and on the larger Half-Cheetah benchmark. We show that DDPG fails on the former and that GEP-PG improves over the best DDPG variant in both environments.
Cite
Text
Colas et al. "GEP-PG: Decoupling Exploration and Exploitation in Deep Reinforcement Learning Algorithms." International Conference on Machine Learning, 2018.Markdown
[Colas et al. "GEP-PG: Decoupling Exploration and Exploitation in Deep Reinforcement Learning Algorithms." International Conference on Machine Learning, 2018.](https://mlanthology.org/icml/2018/colas2018icml-geppg/)BibTeX
@inproceedings{colas2018icml-geppg,
title = {{GEP-PG: Decoupling Exploration and Exploitation in Deep Reinforcement Learning Algorithms}},
author = {Colas, Cédric and Sigaud, Olivier and Oudeyer, Pierre-Yves},
booktitle = {International Conference on Machine Learning},
year = {2018},
pages = {1039-1048},
volume = {80},
url = {https://mlanthology.org/icml/2018/colas2018icml-geppg/}
}