Multiform Evolution for High-Dimensional Problems with Low Effective Dimensionality
Abstract
In this paper, we scale evolutionary algorithms to high-dimensional optimization problems that deceptively possess a low effective dimensionality (certain dimensions do not significantly affect the objective function). To this end, an instantiation of the multiform optimization paradigm is presented, where multiple low-dimensional counterparts of a target high-dimensional task are generated via random embeddings. Since the exact relationship between the auxiliary (low-dimensional) tasks and the target is a priori unknown, a multiform evolutionary algorithm is developed for unifying all formulations into a single multi-task setting. The resultant joint optimization enables the target task to efficiently reuse solutions evolved across various low-dimensional searches via cross-form genetic transfers, hence speeding up overall convergence characteristics. To validate the overall efficacy of our proposed algorithmic framework, comprehensive experimental studies are carried out on well-known continuous benchmark functions as well as a set of practical problems in the hyper-parameter tuning of machine learning models and deep learning models in classification tasks and Predator-Prey games, respectively.
Cite
@article{arxiv.2401.00168,
title = {Multiform Evolution for High-Dimensional Problems with Low Effective Dimensionality},
author = {Yaqing Hou and Mingyang Sun and Abhishek Gupta and Yaochu Jin and Haiyin Piao and Hongwei Ge and Qiang Zhang},
journal= {arXiv preprint arXiv:2401.00168},
year = {2024}
}
Comments
12 pages,6 figures