Strength Through Diversity: Robust Behavior Learning via Mixture Policies
Abstract
Efficiency in robot learning is highly dependent on hyperparameters. Robot morphology and task structure differ widely and finding the optimal setting typically requires sequential or parallel repetition of experiments, strongly increasing the interaction count. We propose a training method that only relies on a single trial by enabling agents to select and combine controller designs conditioned on the task. Our Hyperparameter Mixture Policies (HMPs) feature diverse sub-policies that vary in distribution types and parameterization, reducing the impact of design choices and unlocking synergies between low-level components. We demonstrate strong performance on continuous control tasks, including a simulated ANYmal robot, showing that HMPs yield robust, data-efficient learning.
Cite
Text
Seyde et al. "Strength Through Diversity: Robust Behavior Learning via Mixture Policies." Conference on Robot Learning, 2021.Markdown
[Seyde et al. "Strength Through Diversity: Robust Behavior Learning via Mixture Policies." Conference on Robot Learning, 2021.](https://mlanthology.org/corl/2021/seyde2021corl-strength/)BibTeX
@inproceedings{seyde2021corl-strength,
title = {{Strength Through Diversity: Robust Behavior Learning via Mixture Policies}},
author = {Seyde, Tim and Schwarting, Wilko and Gilitschenski, Igor and Wulfmeier, Markus and Rus, Daniela},
booktitle = {Conference on Robot Learning},
year = {2021},
pages = {1144-1155},
volume = {164},
url = {https://mlanthology.org/corl/2021/seyde2021corl-strength/}
}