Deep Reinforcement Learning in a Handful of Trials using Probabilistic Dynamics Models
Chua, Kurtland, Calandra, Roberto, McAllister, Rowan, Levine, Sergey
–Neural Information Processing Systems
Model-based reinforcement learning (RL) algorithms can attain excellent sample efficiency, but often lag behind the best model-free algorithms in terms of asymptotic performance. This is especially true with high-capacity parametric function approximators, such as deep networks. In this paper, we study how to bridge this gap, by employing uncertainty-aware dynamics models. We propose a new algorithm called probabilistic ensembles with trajectory sampling (PETS) that combines uncertainty-aware deep network dynamics models with sampling-based uncertainty propagation. Our comparison to state-of-the-art model-based and model-free deep RL algorithms shows that our approach matches the asymptotic performance of model-free algorithms on several challenging benchmark tasks, while requiring significantly fewer samples (e.g. 8 and 125 times fewer samples than Soft Actor Critic and Proximal Policy Optimization respectively on the half-cheetah task).
Neural Information Processing Systems
Dec-31-2018
- Country:
- North America
- Canada > Ontario
- Toronto (0.14)
- United States > California (0.14)
- Canada > Ontario
- North America
- Genre:
- Research Report > New Finding (0.68)