Transfer Learning with Gaussian Processes for Bayesian Optimization
Abstract
Bayesian optimization is a powerful paradigm to optimize black-box functions based on scarce and noisy data. Its data efficiency can be further improved by transfer learning from related tasks. While recent transfer models meta-learn a prior based on large amount of data, in the low-data regime methods that exploit the closed-form posterior of Gaussian processes (GPs) have an advantage. In this setting, several analytically tractable transfer-model posteriors have been proposed, but the relative advantages of these methods are not well understood. In this paper, we provide a unified view on hierarchical GP models for transfer learning, which allows us to analyze the relationship between methods. As part of the analysis, we develop a novel closed-form boosted GP transfer model that fits between existing approaches in terms of complexity. We evaluate the performance of the different approaches in large-scale experiments and highlight strengths and weaknesses of the different transfer-learning methods.
Cite
@article{arxiv.2111.11223,
title = {Transfer Learning with Gaussian Processes for Bayesian Optimization},
author = {Petru Tighineanu and Kathrin Skubch and Paul Baireuther and Attila Reiss and Felix Berkenkamp and Julia Vinogradska},
journal= {arXiv preprint arXiv:2111.11223},
year = {2022}
}