Abstract
Although Reinforcement Learning (RL) has shown to be capable of producing impressive results, its use is limited by the impact of its hyperparameters on performance. This often makes it difficult to achieve good results in practice. Automated RL (AutoRL) addresses this difficulty, yet little is known about the dynamics of the hyperparameter landscapes that hyperparameter optimization (HPO) methods traverse in search of optimal configurations. In view of existing AutoRL approaches dynamically adjusting hyperparameter configurations, we propose an approach to build and analyze these hyperparameter landscapes not just for one point in time but at multiple points in time throughout training. Addressing an important open question on the legitimacy of such dynamic AutoRL approaches, we provide thorough empirical evidence that the hyperparameter landscapes strongly vary over time across representative algorithms from RL literature (DQN, PPO, and SAC) in different kinds of environments (Cartpole, Bipedal Walker, and Hopper). This supports the theory that hyperparameters should be dynamically adjusted during training and shows the potential for more insights on AutoRL problems that can be gained through landscape analysis.
| Original language | English |
|---|---|
| Number of pages | 6 |
| Publication status | Published - 20 Jul 2023 |
| Event | European Workshop on Reinforcement Learning 2023 - Brüssel Duration: 13 Sept 2023 → 16 Sept 2023 https://ewrl.wordpress.com/ewrl16-2023/ |
Workshop
| Workshop | European Workshop on Reinforcement Learning 2023 |
|---|---|
| City | Brüssel |
| Period | 13 Sept 2023 → 16 Sept 2023 |
| Internet address |
Research output
- 1 Conference contribution
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AutoRL Hyperparameter Landscapes
Mohan, A., Benjamins, C., Wienecke, K., Dockhorn, A. & Lindauer, M., 12 Nov 2023, Conference proceeding: Second Internatinal Conference on Automated Machine Learning. PMLR, 27 p. (Proceedings of Machine Learning Research; vol. 228).Research output: Chapter in book/report/conference proceeding › Conference contribution › Research › peer review
Open Access
Projects
- 1 Active
-
ixAutoML: Interactive and Explainable Human-Centered AutoML
Lindauer, M. T. (Principal Investigator), Segel, S. (Project staff), Graf, H. (Project staff) & Deng, D. (Project staff)
1 Dec 2022 → 30 Nov 2027
Project: Research
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