Active Learning of Parameterized Skills

Abstract

We introduce a method for actively learning parameterized skills. Parameterized skills are flexible behaviors that can solve any task drawn from a distribution of parameterized reinforcement learning problems. Approaches to learning such skills have been proposed, but limited attention has been given to identifying which training tasks allow for rapid skill acquisition. We construct a non-parametric Bayesian model of skill performance and derive analytical expressions for a novel acquisition criterion capable of identifying tasks that maximize expected improvement in skill performance. We also introduce a spatiotemporal kernel tailored for non-stationary skill performance models. The proposed method is agnostic to policy and skill representation and scales independently of task dimensionality. We evaluate it on a non-linear simulated catapult control problem over arbitrarily mountainous terrains.

Cite

Text

Da Silva et al. "Active Learning of Parameterized Skills." International Conference on Machine Learning, 2014.

Markdown

[Da Silva et al. "Active Learning of Parameterized Skills." International Conference on Machine Learning, 2014.](https://mlanthology.org/icml/2014/silva2014icml-active/)

BibTeX

@inproceedings{silva2014icml-active,
  title     = {{Active Learning of Parameterized Skills}},
  author    = {Da Silva, Bruno and Konidaris, George and Barto, Andrew},
  booktitle = {International Conference on Machine Learning},
  year      = {2014},
  pages     = {1737-1745},
  volume    = {32},
  url       = {https://mlanthology.org/icml/2014/silva2014icml-active/}
}