A cooperative approach to efficient global optimization

被引:0
作者
Dawei Zhan
Jintao Wu
Huanlai Xing
Tianrui Li
机构
[1] Southwest Jiaotong University,School of Computing and Artificial Inteligence
来源
Journal of Global Optimization | 2024年 / 88卷
关键词
Efficient global optimization; High-dimensional optimization; Expensive optimization; Cooperative approach;
D O I
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中图分类号
学科分类号
摘要
The efficient global optimization (EGO) algorithm is widely used for solving expensive optimization problems, but it has been frequently criticized for its incapability of solving high-dimensional problems, i.e., problems with 100 or more variables. Extending the EGO algorithm to high dimensions encounters two major challenges: the training time of the Kriging model goes up rapidly and the difficulty of solving the infill optimization problem increases exponentially as the dimension of the problem increases. In this work, we propose a simple and efficient cooperative framework to tackle these two problems simultaneously. In the proposed framework, we first randomly decompose the original high-dimensional problem into several sub-problems, and then train the Kriging model and solve the infill optimization problem for each sub-problem. Context vectors are used to link the sub-problems such that the Kriging models are trained and the infill optimization problems are solved in a cooperative way. Once all the sub-problems have been solved, we start another random decomposition again and repeat the divide-and-conquer process until the computational budget is reached. Experiment results show that the proposed cooperative approach can bring nearly linear speedup with respect to the number of sub-problems. The proposed approach also shows competitive optimization performance when compared with the standard EGO and six high-dimensional versions of EGO. This work provides an efficient and effective approach for high-dimensional expensive optimization.
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页码:327 / 357
页数:30
相关论文
共 102 条
[1]  
Binois M(2020)On the choice of the low-dimensional domain for global optimization via random embeddings J. Glob. Optim. 76 69-90
[2]  
Ginsbourger D(2016)Improving kriging surrogates of high-dimensional design models by partial least squares dimension reduction Struct. Multidiscip. Optim. 53 935-952
[3]  
Roustant O(2018)Efficient global optimization for high-dimensional constrained problems by using the kriging models combined with the partial least squares method Eng. Optim. 50 2038-2053
[4]  
Bouhlel MA(2019)Monte Carlo integration with adaptive variance selection for improved stochastic efficient global optimization Struct. Multidiscip. Optim. 60 245-268
[5]  
Bartoli N(2014)Fast calculation of multiobjective probability of improvement and expected improvement criteria for pareto optimization J. Glob. Optim. 60 575-594
[6]  
Otsmane A(2000)An efficient constraint handling method for genetic algorithms Comput. Methods Appl. Mech. Eng. 186 311-338
[7]  
Morlier J(2019)A taxonomy for metamodeling frameworks for evolutionary multiobjective optimization IEEE Trans. Evol. Comput. 23 104-116
[8]  
Bouhlel MA(2006)Design and analysis of noisy computer experiments AIAA J. 44 2331-2339
[9]  
Bartoli N(2006)Sequential kriging optimization using multiple-fidelity evaluations Struct. Multidiscip. Optim. 32 369-382
[10]  
Regis RG(2006)Global optimization of stochastic black-box systems via sequential kriging meta-models J. Glob. Optim. 34 441-466