English

CMA-ES with Radial Basis Function Surrogate for Black-Box Optimization

Neural and Evolutionary Computing 2025-05-23 v1

Abstract

Evolutionary optimization algorithms often face defects and limitations that complicate the evolution processes or even prevent them from reaching the global optimum. A notable constraint pertains to the considerable quantity of function evaluations required to achieve the intended solution. This concern assumes heightened significance when addressing costly optimization problems. However, recent research has shown that integrating machine learning methods, specifically surrogate models, with evolutionary optimization can enhance various aspects of these algorithms. Among the evolutionary algorithms, the Covariance Matrix Adaptation Evolutionary Strategy (CMA-ES) is particularly favored. This preference is due to its use of Gaussian distribution for calculating evolution and its ability to adapt optimization parameters, which reduces the need for user intervention in adjusting initial parameters. In this research endeavor, we propose the adoption of surrogate models within the CMA-ES framework called CMA-SAO to develop an initial surrogate model that facilitates the adaptation of optimization parameters through the acquisition of pertinent information derived from the associated surrogate model. Empirical validation reveals that CMA-SAO algorithm markedly diminishes the number of function evaluations in comparison to prevailing algorithms, thereby providing a significant enhancement in operational efficiency.

Keywords

Cite

@article{arxiv.2505.16127,
  title  = {CMA-ES with Radial Basis Function Surrogate for Black-Box Optimization},
  author = {Farshid Farhadi Khouzani and Abdolreza Mirzaei and Paul La Plante and Laxmi Gewali},
  journal= {arXiv preprint arXiv:2505.16127},
  year   = {2025}
}

Comments

6 pages, ITNG 2025 Conference

R2 v1 2026-07-01T02:30:08.663Z