2021
DOI: 10.1109/tcyb.2020.3008280
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Data-Driven Evolutionary Algorithm With Perturbation-Based Ensemble Surrogates

Abstract: Data-driven evolutionary algorithms (DDEAs) aim to utilize data and surrogates to drive optimization, which is useful and efficient when the objective function of the optimization problem is expensive or difficult to access. However, the performance of DDEAs relies on their surrogate quality and often deteriorates if the amount of available data decreases. To solve these problems, this article proposes a new DDEA framework with perturbation-based ensemble surrogates (DDEA-PES), which contain two efficient mech… Show more

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Cited by 97 publications
(30 citation statements)
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“…Furthermore, how to evolve the network depth and topology of CNNs is worthy of further research. Also, more efficient optimization paradigms can be considered for CNN optimization in different scenarios, where potential optimization paradigms include data-driven optimization [61], large-scale optimization [62], dynamic optimization [63], many-objective optimization [64], multi-modal optimization [65], expensive optimization [66], and parallel [67] and distributed optimization [68]. In addition, the SHEDA is potential for solving more challenging learning tasks in complex real-world applications, such as healthcare application [69] and autonomous robot application [70], which will be further explored and studied.…”
Section: J Further Discussionmentioning
confidence: 99%
“…Furthermore, how to evolve the network depth and topology of CNNs is worthy of further research. Also, more efficient optimization paradigms can be considered for CNN optimization in different scenarios, where potential optimization paradigms include data-driven optimization [61], large-scale optimization [62], dynamic optimization [63], many-objective optimization [64], multi-modal optimization [65], expensive optimization [66], and parallel [67] and distributed optimization [68]. In addition, the SHEDA is potential for solving more challenging learning tasks in complex real-world applications, such as healthcare application [69] and autonomous robot application [70], which will be further explored and studied.…”
Section: J Further Discussionmentioning
confidence: 99%
“…To this aim, very recently, Li et al (2020c) proposed to build an accurate surrogate by efficiently manipulating the small number of available data via a localized data generation (LDG) method, so as to design a boosting DDEA with LDG (BDDEA-LDG). Moreover, Li et al (2020d) further proposed a DDEA with perturbation-based ensemble surrogates (DDEA-PES) on the small number of available data. The few-shot true evaluated data makes the algorithms slighter and easier for using.…”
Section: Reducing Problem Difficultymentioning
confidence: 99%
“…Although the evaluation of airfoil performance requires timeconsuming CFD simulations, the proposed algorithm can obtain a high-quality solution efficiently through active learning-based surrogates. Similarly, Li et al (2020d) applied GA with perturbation-based ensemble surrogates for the expensive airfoil design optimization as well and obtained great results. In an expensive shape optimization of an air intake ventilation system, Chugh et al (2017) proposed a Kriging-based EA to tackle three main challenges, i.e., formulating the optimization problem, connecting different simulation tools, and dealing with computationally expensive objective functions, which obtained promising results in the blast furnace optimization problem.…”
Section: Extending Application Fieldmentioning
confidence: 99%
“…To efficiently solve the proposed MaJSSP, the multiple populations for multiple objectives (MPMO) [22] framework that has shown excellent performance on both multiobjective optimization [23], [24] and many-objective optimization [25] is adopted. Evolutionary computation algorithms are promising optimizers for various optimization problems [26]- [29]. In particular, the GA has shown powerful efficiency in solving discrete optimization problems [30], [31].…”
Section: Introductionmentioning
confidence: 99%