On averaging the best samples in evolutionary computation
Neural and Evolutionary Computing
2020-06-22 v3 Machine Learning
Machine Learning
Abstract
Choosing the right selection rate is a long standing issue in evolutionary computation. In the continuous unconstrained case, we prove mathematically that a single parent leads to a sub-optimal simple regret in the case of the sphere function. We provide a theoretically-based selection rate that leads to better progress rates. With our choice of selection rate, we get a provable regret of order which has to be compared with in the case where . We complete our study with experiments to confirm our theoretical claims.
Cite
@article{arxiv.2004.11685,
title = {On averaging the best samples in evolutionary computation},
author = {Laurent Meunier and Yann Chevaleyre and Jeremy Rapin and Clément W. Royer and Olivier Teytaud},
journal= {arXiv preprint arXiv:2004.11685},
year = {2020}
}