Lenient Regret and Good-Action Identification in Gaussian Process Bandits
Abstract
In this paper, we study the problem of Gaussian process (GP) bandits under relaxed optimization criteria stating that any function value above a certain threshold is “good enough”. On the theoretical side, we study various {\em lenient regret} notions in which all near-optimal actions incur zero penalty, and provide upper bounds on the lenient regret for GP-UCB and an elimination algorithm, circumventing the usual $O(\sqrt{T})$ term (with time horizon $T$) resulting from zooming extremely close towards the function maximum. In addition, we complement these upper bounds with algorithm-independent lower bounds. On the practical side, we consider the problem of finding a single “good action” according to a known pre-specified threshold, and introduce several good-action identification algorithms that exploit knowledge of the threshold. We experimentally find that such algorithms can typically find a good action faster than standard optimization-based approaches.
Cite
Text
Cai et al. "Lenient Regret and Good-Action Identification in Gaussian Process Bandits." International Conference on Machine Learning, 2021.Markdown
[Cai et al. "Lenient Regret and Good-Action Identification in Gaussian Process Bandits." International Conference on Machine Learning, 2021.](https://mlanthology.org/icml/2021/cai2021icml-lenient/)BibTeX
@inproceedings{cai2021icml-lenient,
title = {{Lenient Regret and Good-Action Identification in Gaussian Process Bandits}},
author = {Cai, Xu and Gomes, Selwyn and Scarlett, Jonathan},
booktitle = {International Conference on Machine Learning},
year = {2021},
pages = {1183-1192},
volume = {139},
url = {https://mlanthology.org/icml/2021/cai2021icml-lenient/}
}