Evolutionary Dynamic Optimization and Machine Learning
Abstract
Evolutionary Computation (EC) has emerged as a powerful field of Artificial Intelligence, inspired by nature's mechanisms of gradual development. However, EC approaches often face challenges such as stagnation, diversity loss, computational complexity, population initialization, and premature convergence. To overcome these limitations, researchers have integrated learning algorithms with evolutionary techniques. This integration harnesses the valuable data generated by EC algorithms during iterative searches, providing insights into the search space and population dynamics. Similarly, the relationship between evolutionary algorithms and Machine Learning (ML) is reciprocal, as EC methods offer exceptional opportunities for optimizing complex ML tasks characterized by noisy, inaccurate, and dynamic objective functions. These hybrid techniques, known as Evolutionary Machine Learning (EML), have been applied at various stages of the ML process. EC techniques play a vital role in tasks such as data balancing, feature selection, and model training optimization. Moreover, ML tasks often require dynamic optimization, for which Evolutionary Dynamic Optimization (EDO) is valuable. This paper presents the first comprehensive exploration of reciprocal integration between EDO and ML. The study aims to stimulate interest in the evolutionary learning community and inspire innovative contributions in this domain.
Cite
@article{arxiv.2310.08748,
title = {Evolutionary Dynamic Optimization and Machine Learning},
author = {Abdennour Boulesnane},
journal= {arXiv preprint arXiv:2310.08748},
year = {2024}
}
Comments
This is a preprint of the following chapter: Abdennour Boulesnane, Evolutionary Dynamic Optimization and Machine Learning, published in Advanced Machine Learning with Evolutionary and Metaheuristic Techniques, Computational Intelligence Methods and Applications, edited by J. Valadi et al. (eds.),2024, Springer Nature