HV-Net: Hypervolume Approximation based on DeepSets
Abstract
In this letter, we propose HV-Net, a new method for hypervolume approximation in evolutionary multi-objective optimization. The basic idea of HV-Net is to use DeepSets, a deep neural network with permutation invariant property, to approximate the hypervolume of a non-dominated solution set. The input of HV-Net is a non-dominated solution set in the objective space, and the output is an approximated hypervolume value of this solution set. The performance of HV-Net is evaluated through computational experiments by comparing it with two commonly-used hypervolume approximation methods (i.e., point-based method and line-based method). Our experimental results show that HV-Net outperforms the other two methods in terms of both the approximation error and the runtime, which shows the potential of using deep learning technique for hypervolume approximation.
Cite
@article{arxiv.2203.02185,
title = {HV-Net: Hypervolume Approximation based on DeepSets},
author = {Ke Shang and Weiyu Chen and Weiduo Liao and Hisao Ishibuchi},
journal= {arXiv preprint arXiv:2203.02185},
year = {2022}
}