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Feature selection for surrogate model-based optimization
Author(s) -
Frederik Rehbach,
Lorenzo Gentile,
Thomas Bartz–Beielstein
Publication year - 2019
Publication title -
proceedings of the genetic and evolutionary computation conference companion
Language(s) - English
Resource type - Conference proceedings
ISBN - 978-1-4503-6748-6
DOI - 10.1145/3319619.3322020
Subject(s) - surrogate model , computer science , selection (genetic algorithm) , feature selection , artificial intelligence , feature (linguistics) , pattern recognition (psychology) , mathematical optimization , machine learning , mathematics , philosophy , linguistics
We propose a hybridization approach called Regularized-Surrogate-Optimization (RSO) aimed at overcoming difficulties related to high-dimensionality. It combines standard Kriging-based SMBO with regularization techniques. The employed regularization methods use the least absolute shrinkage and selection operator (LASSO). An extensive study is performed on a set of artificial test functions and two real-world applications: the electrostatic precipitator problem and a multilayered composite design problem. Experiments reveal that RSO requires significantly less time than Kriging to obtain comparable results. The pros and cons of the RSO approach are discussed and recommendations for practitioners are presented.

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