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On Some Tunable Multi-fidelity Bayesian Optimization Frameworks

Machine Learning 2025-08-05 v1 Artificial Intelligence Optimization and Control

Abstract

Multi-fidelity optimization employs surrogate models that integrate information from varying levels of fidelity to guide efficient exploration of complex design spaces while minimizing the reliance on (expensive) high-fidelity objective function evaluations. To advance Gaussian Process (GP)-based multi-fidelity optimization, we implement a proximity-based acquisition strategy that simplifies fidelity selection by eliminating the need for separate acquisition functions at each fidelity level. We also enable multi-fidelity Upper Confidence Bound (UCB) strategies by combining them with multi-fidelity GPs rather than the standard GPs typically used. We benchmark these approaches alongside other multi-fidelity acquisition strategies (including fidelity-weighted approaches) comparing their performance, reliance on high-fidelity evaluations, and hyperparameter tunability in representative optimization tasks. The results highlight the capability of the proximity-based multi-fidelity acquisition function to deliver consistent control over high-fidelity usage while maintaining convergence efficiency. Our illustrative examples include multi-fidelity chemical kinetic models, both homogeneous and heterogeneous (dynamic catalysis for ammonia production).

Keywords

Cite

@article{arxiv.2508.01013,
  title  = {On Some Tunable Multi-fidelity Bayesian Optimization Frameworks},
  author = {Arjun Manoj and Anastasia S. Georgiou and Dimitris G. Giovanis and Themistoklis P. Sapsis and Ioannis G. Kevrekidis},
  journal= {arXiv preprint arXiv:2508.01013},
  year   = {2025}
}