English

Scalable Bayesian optimization with high-dimensional outputs using randomized prior networks

Machine Learning 2023-09-15 v5 Artificial Intelligence Optimization and Control Machine Learning

Abstract

Several fundamental problems in science and engineering consist of global optimization tasks involving unknown high-dimensional (black-box) functions that map a set of controllable variables to the outcomes of an expensive experiment. Bayesian Optimization (BO) techniques are known to be effective in tackling global optimization problems using a relatively small number objective function evaluations, but their performance suffers when dealing with high-dimensional outputs. To overcome the major challenge of dimensionality, here we propose a deep learning framework for BO and sequential decision making based on bootstrapped ensembles of neural architectures with randomized priors. Using appropriate architecture choices, we show that the proposed framework can approximate functional relationships between design variables and quantities of interest, even in cases where the latter take values in high-dimensional vector spaces or even infinite-dimensional function spaces. In the context of BO, we augmented the proposed probabilistic surrogates with re-parameterized Monte Carlo approximations of multiple-point (parallel) acquisition functions, as well as methodological extensions for accommodating black-box constraints and multi-fidelity information sources. We test the proposed framework against state-of-the-art methods for BO and demonstrate superior performance across several challenging tasks with high-dimensional outputs, including a constrained multi-fidelity optimization task involving shape optimization of rotor blades in turbo-machinery.

Keywords

Cite

@article{arxiv.2302.07260,
  title  = {Scalable Bayesian optimization with high-dimensional outputs using randomized prior networks},
  author = {Mohamed Aziz Bhouri and Michael Joly and Robert Yu and Soumalya Sarkar and Paris Perdikaris},
  journal= {arXiv preprint arXiv:2302.07260},
  year   = {2023}
}

Comments

23 pages, 8 figures

R2 v1 2026-06-28T08:40:09.168Z