Larger Offspring Populations Help the $(1 + (\lambda, \lambda))$ Genetic Algorithm to Overcome the Noise
Neural and Evolutionary Computing
2023-05-10 v1 Artificial Intelligence
Abstract
Evolutionary algorithms are known to be robust to noise in the evaluation of the fitness. In particular, larger offspring population sizes often lead to strong robustness. We analyze to what extent the genetic algorithm is robust to noise. This algorithm also works with larger offspring population sizes, but an intermediate selection step and a non-standard use of crossover as repair mechanism could render this algorithm less robust than, e.g., the simple evolutionary algorithm. Our experimental analysis on several classic benchmark problems shows that this difficulty does not arise. Surprisingly, in many situations this algorithm is even more robust to noise than the ~EA.
Cite
@article{arxiv.2305.04553,
title = {Larger Offspring Populations Help the $(1 + (\lambda, \lambda))$ Genetic Algorithm to Overcome the Noise},
author = {Alexandra Ivanova and Denis Antipov and Benjamin Doerr},
journal= {arXiv preprint arXiv:2305.04553},
year = {2023}
}
Comments
Author-generated version of the same paper published at GECCO 2023