Deep Bayesian Quadrature Policy Optimization
Abstract
We study the problem of obtaining accurate policy gradient estimates using a finite number of samples. Monte-Carlo methods have been the default choice for policy gradient estimation, despite suffering from high variance in the gradient estimates. On the other hand, more sample efficient alternatives like Bayesian quadrature methods have received little attention due to their high computational complexity. In this work, we propose deep Bayesian quadrature policy gradient (DBQPG), a computationally efficient high-dimensional generalization of Bayesian quadrature, for policy gradient estimation. We show that DBQPG can substitute Monte-Carlo estimation in policy gradient methods, and demonstrate its effectiveness on a set of continuous control benchmarks. In comparison to Monte-Carlo estimation, DBQPG provides (i) more accurate gradient estimates with a significantly lower variance, (ii) a consistent improvement in the sample complexity and average return for several deep policy gradient algorithms, and, (iii) the uncertainty in gradient estimation that can be incorporated to further improve the performance.
Additional Information
© 2021 Association for the Advancement of Artificial Intelligence. Published: 2021-05-18. K. Azizzadenesheli is supported in part by Raytheon and Amazon Web Service. A. Anandkumar is supported in part by Bren endowed chair, DARPA PAIHR00111890035 and LwLL grants, Raytheon, Microsoft, Google, and Adobe faculty fellowships.Attached Files
Submitted - 2006.15637.pdf
Files
Name | Size | Download all |
---|---|---|
md5:531b08b477b5a10f6c295c8803a21f1c
|
10.0 MB | Preview Download |
Additional details
- Eprint ID
- 106489
- Resolver ID
- CaltechAUTHORS:20201106-120212166
- Raytheon Company
- Amazon Web Services
- Bren Professor of Computing and Mathematical Sciences
- Defense Advanced Research Projects Agency (DARPA)
- HR00111890035
- Learning with Less Labels (LwLL)
- Microsoft Faculty Fellowship
- Google Faculty Research Award
- Adobe
- Created
-
2020-11-06Created from EPrint's datestamp field
- Updated
-
2023-06-02Created from EPrint's last_modified field
- Series Name
- Proceedings of the AAAI Conference on Artificial Intelligence