TL;DR
This study critically evaluates Bayesian optimization using the COCO benchmark, revealing insights into design choices that influence performance and providing practical recommendations for effective implementation.
Contribution
It offers a comprehensive analysis of Bayesian optimization design choices using COCO, identifying key factors that improve performance and challenging some common assumptions.
Findings
Small initial budget improves progress
Quadratic trend and high-quality acquisition optimization are beneficial
Warping degrades performance
Abstract
It is commonly believed that Bayesian optimization (BO) algorithms are highly efficient for optimizing numerically costly functions. However, BO is not often compared to widely different alternatives, and is mostly tested on narrow sets of problems (multimodal, low-dimensional functions), which makes it difficult to assess where (or if) they actually achieve state-of-the-art performance. Moreover, several aspects in the design of these algorithms vary across implementations without a clear recommendation emerging from current practices, and many of these design choices are not substantiated by authoritative test campaigns. This article reports a large investigation about the effects on the performance of (Gaussian process based) BO of common and less common design choices. The experiments are carried out with the established COCO (COmparing Continuous Optimizers) software. It is found…
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