Nonmyopic Global Optimisation via Approximate Dynamic Programming
Filippo Airaldi, Bart De Schutter, Azita Dabiri

TL;DR
This paper introduces nonmyopic acquisition strategies for deterministic surrogate models in global optimization, using approximate dynamic programming to improve long-term performance over traditional myopic methods.
Contribution
It extends nonmyopic acquisition functions from Bayesian to deterministic models like IDW and RBF using approximate dynamic programming techniques.
Findings
Nonmyopic methods outperform myopic approaches in synthetic and real-world benchmarks.
Proposed strategies lead to faster convergence and more robust optimization.
Empirical results demonstrate significant improvements in hyperparameter tuning and predictive control.
Abstract
Global optimisation to optimise expensive-to-evaluate black-box functions without gradient information. Bayesian optimisation, one of the most well-known techniques, typically employs Gaussian processes as surrogate models, leveraging their probabilistic nature to balance exploration and exploitation. However, these processes become computationally prohibitive in high-dimensional spaces. Recent alternatives, based on inverse distance weighting (IDW) and radial basis functions (RBFs), offer competitive, computationally lighter solutions. Despite their efficiency, both traditional global and Bayesian optimisation strategies suffer from the myopic nature of their acquisition functions, which focus on immediate improvement neglecting future implications of the sequential decision making process. Nonmyopic acquisition functions devised for the Bayesian setting have shown promise in improving…
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