A Runtime Analysis of the Multi-Valued Compact Genetic Algorithm on Generalized LeadingOnes
Abstract
In the literature on runtime analyses of estimation of distribution algorithms (EDAs), researchers have recently explored univariate EDAs for multi-valued decision variables. Particularly, Jedidia et al. gave the first runtime analysis of the multi-valued UMDA on the r-valued LeadingOnes (r-LeadingOnes) functions and Adak et al. gave the first runtime analysis of the multi-valued cGA (r-cGA) on the r-valued OneMax function. We utilize their framework to conduct an analysis of the multi-valued cGA on the r-valued LeadingOnes function. Even for the binary case, a runtime analysis of the classical cGA on LeadingOnes was not yet available. In this work, we show that the runtime of the r-cGA on r-LeadingOnes is O(n^2r^2 log^3 n log^2 r) with high probability.
Cite
@article{arxiv.2501.09514,
title = {A Runtime Analysis of the Multi-Valued Compact Genetic Algorithm on Generalized LeadingOnes},
author = {Sumit Adak and Carsten Witt},
journal= {arXiv preprint arXiv:2501.09514},
year = {2025}
}
Comments
To appear at EvoCOP 2025