Title A hybrid of Bayesian-based global search with Hooke–Jeeves local refinement for multi-objective optimization problems /
Authors Litvinas, Linas
DOI 10.15388/namc.2022.27.26558
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Is Part of Nonlinear analysis: modelling and control.. Vilnius : Vilniaus universiteto leidykla. 2022, vol. 27, no. 3, p. 534-555.. ISSN 1392-5113. eISSN 2335-8963
Keywords [eng] global optimization ; Bayesian algorithm ; Hooke–Jeeves ; local refinement.
Abstract [eng] The proposed multi-objective optimization algorithm hybridizes random global search with a local refinement algorithm. The global search algorithm mimics the Bayesian multi-objective optimization algorithm. The site of current computation of the objective functions by the proposed algorithm is selected by randomized simulation of the bi-objective selection by the Bayesian-based algorithm. The advantage of the new algorithm is that it avoids the inner complexity of Bayesian algorithms. A version of the Hooke–Jeeves algorithm is adapted for the local refinement of the approximation of the Pareto front. The developed hybrid algorithm is tested under conditions previously applied to test other Bayesian algorithms so that performance could be compared. Other experiments were performed to assess the efficiency of the proposed algorithm under conditions where the previous versions of Bayesian algorithms were not appropriate because of the number of objectives and/or dimensionality of the decision space.
Published Vilnius : Vilniaus universiteto leidykla
Type Journal article
Language English
Publication date 2022
CC license CC license description