An adaptive Bayesian approach to surrogate-assisted evolutionary multi-objective optimization

Wang X, Jin Y, Schmitt S, Olhofer M (2020)
Information Sciences 519: 317-331.

Zeitschriftenaufsatz | Veröffentlicht | Englisch
 
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Autor*in
Wang, Xilu; Jin, YaochuUniBi ; Schmitt, Sebastian; Olhofer, Markus
Abstract / Bemerkung
Surrogate models have been widely used for solving computationally expensive multi-objective optimization problems (MOPs). The efficient global optimization (EGO) algorithm, a Bayesian approach to surrogate-assisted optimization, has become very popular in surrogate-assisted evolutionary optimization. In this paper, we propose an adaptive Bayesian approach to surrogate-assisted evolutionary algorithm to solve expensive MOPs. The main idea is to tune the hyperparameter in the acquisition function according to the search dynamics to determine which candidate solutions are to be evaluated using the expensive real objective functions. In addition, the sampling selection criterion switches between an angle based distance and an angle-penalized distance over the course of optimization to achieve a better balance between exploration and exploitation. The performance of the proposed algorithm is examined on a set of benchmark problems and an airfoil design optimization problem using a maximum of 300 real fitness evaluations. Our experimental results show that the proposed algorithm is competitive compared to four popular multi-objective evolutionary algorithms.
Erscheinungsjahr
2020
Zeitschriftentitel
Information Sciences
Band
519
Seite(n)
317-331
ISSN
0020-0255
Page URI
https://pub.uni-bielefeld.de/record/2978402

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Wang X, Jin Y, Schmitt S, Olhofer M. An adaptive Bayesian approach to surrogate-assisted evolutionary multi-objective optimization. Information Sciences. 2020;519:317-331.
Wang, X., Jin, Y., Schmitt, S., & Olhofer, M. (2020). An adaptive Bayesian approach to surrogate-assisted evolutionary multi-objective optimization. Information Sciences, 519, 317-331. https://doi.org/10.1016/j.ins.2020.01.048
Wang, Xilu, Jin, Yaochu, Schmitt, Sebastian, and Olhofer, Markus. 2020. “An adaptive Bayesian approach to surrogate-assisted evolutionary multi-objective optimization”. Information Sciences 519: 317-331.
Wang, X., Jin, Y., Schmitt, S., and Olhofer, M. (2020). An adaptive Bayesian approach to surrogate-assisted evolutionary multi-objective optimization. Information Sciences 519, 317-331.
Wang, X., et al., 2020. An adaptive Bayesian approach to surrogate-assisted evolutionary multi-objective optimization. Information Sciences, 519, p 317-331.
X. Wang, et al., “An adaptive Bayesian approach to surrogate-assisted evolutionary multi-objective optimization”, Information Sciences, vol. 519, 2020, pp. 317-331.
Wang, X., Jin, Y., Schmitt, S., Olhofer, M.: An adaptive Bayesian approach to surrogate-assisted evolutionary multi-objective optimization. Information Sciences. 519, 317-331 (2020).
Wang, Xilu, Jin, Yaochu, Schmitt, Sebastian, and Olhofer, Markus. “An adaptive Bayesian approach to surrogate-assisted evolutionary multi-objective optimization”. Information Sciences 519 (2020): 317-331.

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