Augmented Bayesian Policy Search
Abstract
Deterministic policies are often preferred over stochastic ones when implemented on physical systems. They can prevent erratic and harmful behaviors while being easier to implement and interpret. However, in practice, exploration is largely performed by stochastic policies. First-order Bayesian Optimization (BO) methods offer a principled way of performing exploration using deterministic policies. This is done through a learned probabilistic model of the objective function and its gradient. Nonetheless, such approaches treat policy search as a black-box problem, and thus, neglect the reinforcement learning nature of the problem. In this work, we leverage the performance difference lemma to introduce a novel mean function for the probabilistic model. This results in augmenting BO methods with the action-value function. Hence, we call our method Augmented Bayesian Search (ABS). Interestingly, this new mean function enhances the posterior gradient with the deterministic policy gradient, effectively bridging the gap between BO and policy gradient methods. The resulting algorithm combines the convenience of the direct policy search with the scalability of reinforcement learning. We validate ABS on high-dimensional locomotion problems and demonstrate competitive performance compared to existing direct policy search schemes.
Cite
Text
Kallel et al. "Augmented Bayesian Policy Search." International Conference on Learning Representations, 2024.Markdown
[Kallel et al. "Augmented Bayesian Policy Search." International Conference on Learning Representations, 2024.](https://mlanthology.org/iclr/2024/kallel2024iclr-augmented/)BibTeX
@inproceedings{kallel2024iclr-augmented,
title = {{Augmented Bayesian Policy Search}},
author = {Kallel, Mahdi and Basu, Debabrota and Akrour, Riad and D'Eramo, Carlo},
booktitle = {International Conference on Learning Representations},
year = {2024},
url = {https://mlanthology.org/iclr/2024/kallel2024iclr-augmented/}
}