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Surrogate models in evolutionary single-objective optimization: A new taxonomy and experimental study.

Authors :
Tong, Hao
Huang, Changwu
Minku, Leandro L.
Yao, Xin
Source :
Information Sciences. Jul2021, Vol. 562, p414-437. 24p.
Publication Year :
2021

Abstract

• A review and comparison of surrogate models used in single-objective SAEAs. • Review surrogate models in terms of absolute and relative fitness models. • The construction and prediction time of models, and model's accuracy are compared. • SAEAs with different surrogate models are compared. Surrogate-assisted evolutionary algorithms (SAEAs), which use efficient surrogate models or meta-models to approximate the fitness function in evolutionary algorithms (EAs), are effective and popular methods for solving computationally expensive optimization problems. During the past decades, a number of SAEAs have been proposed by combining different surrogate models and EAs. This paper dedicates to providing a more systematical review and comprehensive empirical study of surrogate models used in single-objective SAEAs. A new taxonomy of surrogate models in SAEAs for single-objective optimization is introduced in this paper. Surrogate models are classified into two major categories: absolute fitness models, which directly approximate the fitness function values of candidate solutions, and relative fitness models, which estimates the relative rank or preference of candidates rather than their fitness values. Then, the characteristics of different models are analyzed and compared by conducting a series of experiments in terms of time complexity (execution time), model accuracy, parameter influence, and the overall performance when used in EAs. The empirical results are helpful for researchers to select suitable surrogate models when designing SAEAs. Open research questions and future work are discussed at the end of the paper. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
00200255
Volume :
562
Database :
Academic Search Index
Journal :
Information Sciences
Publication Type :
Periodical
Accession number :
150695313
Full Text :
https://doi.org/10.1016/j.ins.2021.03.002