Towards non-linear constraint estimation for expensive optimization

Fabian Gieseke, Oliver Kramer

10 Citationer (Scopus)

Abstract

Constraints can render a numerical optimization problem much more difficult to address. In many real-world optimization applications, however, such constraints are not explicitly given. Instead, one has access to some kind of a "black-box" that represents the (unknown) constraint function. Recently, we proposed a fast linear constraint estimator that was based on binary search. This paper extends these results by (a) providing an alternative scheme that resorts to the effective use of support vector machines and by (b) addressing the more general task of non-linear decision boundaries. In particular, we make use of active learning strategies from the field of machine learning to select reasonable training points for the recurrent application of the classifier. We compare both constraint estimation schemes on linear and non-linear constraint functions, and depict opportunities and pitfalls concerning the effective integration of such models into a global optimization process.

OriginalsprogEngelsk
TitelApplications of Evolutionary Computation : 16th European Conference, EvoApplications 2013, Vienna, Austria, April 3-5, 2013. Proceedings
RedaktørerAnna I. Esparcia-Alcázar
Antal sider10
ForlagSpringer
Publikationsdato2013
Sider459-468
ISBN (Trykt)978-3-642-37191-2
ISBN (Elektronisk)978-3-642-37192-9
DOI
StatusUdgivet - 2013
Udgivet eksterntJa
Begivenhed16th European Conference on Applications of Evolutionary Computation - Wien, Østrig
Varighed: 3 apr. 20135 apr. 2013
Konferencens nummer: 16

Konference

Konference16th European Conference on Applications of Evolutionary Computation
Nummer16
Land/OmrådeØstrig
ByWien
Periode03/04/201305/04/2013
NavnLecture notes in computer science
Vol/bind7835
ISSN0302-9743

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