English

Non-Myopic Multifidelity Bayesian Optimization

Machine Learning 2024-07-08 v3 Optimization and Control

Abstract

Bayesian optimization is a popular framework for the optimization of black box functions. Multifidelity methods allows to accelerate Bayesian optimization by exploiting low-fidelity representations of expensive objective functions. Popular multifidelity Bayesian strategies rely on sampling policies that account for the immediate reward obtained evaluating the objective function at a specific input, precluding greater informative gains that might be obtained looking ahead more steps. This paper proposes a non-myopic multifidelity Bayesian framework to grasp the long-term reward from future steps of the optimization. Our computational strategy comes with a two-step lookahead multifidelity acquisition function that maximizes the cumulative reward obtained measuring the improvement in the solution over two steps ahead. We demonstrate that the proposed algorithm outperforms a standard multifidelity Bayesian framework on popular benchmark optimization problems.

Keywords

Cite

@article{arxiv.2207.06325,
  title  = {Non-Myopic Multifidelity Bayesian Optimization},
  author = {Francesco Di Fiore and Laura Mainini},
  journal= {arXiv preprint arXiv:2207.06325},
  year   = {2024}
}