In this paper we introduce the LEGO (LEarning for Global Optimization) approach for global optimization in which machine learning is used to predict the outcome of a computationally expensive global optimization run, based upon a suitable training performed by standard runs of the same global optimization method. We propose to use a Support Vector Machine (although different machine learning tools might be employed) to learn the relationship between the starting point of an algorithm and the final outcome (which is usually related to the function value at the point returned by the procedure). Numerical experiments performed both on classical test functions and on difficult space trajectory planning problems show that the proposed approach can be very effective in identifying good starting points for global optimization. © Springer Science+Business Media, LLC 2010.

Machine learning for global optimization / Cassioli, A.; Di Lorenzo, D.; Locatelli, M.; Schoen, F.; Sciandrone, M.. - In: COMPUTATIONAL OPTIMIZATION AND APPLICATIONS. - ISSN 0926-6003. - 51:1(2012), pp. 279-303. [10.1007/s10589-010-9330-x]

Machine learning for global optimization

Schoen F.;Sciandrone M.
2012

Abstract

In this paper we introduce the LEGO (LEarning for Global Optimization) approach for global optimization in which machine learning is used to predict the outcome of a computationally expensive global optimization run, based upon a suitable training performed by standard runs of the same global optimization method. We propose to use a Support Vector Machine (although different machine learning tools might be employed) to learn the relationship between the starting point of an algorithm and the final outcome (which is usually related to the function value at the point returned by the procedure). Numerical experiments performed both on classical test functions and on difficult space trajectory planning problems show that the proposed approach can be very effective in identifying good starting points for global optimization. © Springer Science+Business Media, LLC 2010.
2012
Global optimization; Machine learning; Space trajectory design; Support vector machines
01 Pubblicazione su rivista::01a Articolo in rivista
Machine learning for global optimization / Cassioli, A.; Di Lorenzo, D.; Locatelli, M.; Schoen, F.; Sciandrone, M.. - In: COMPUTATIONAL OPTIMIZATION AND APPLICATIONS. - ISSN 0926-6003. - 51:1(2012), pp. 279-303. [10.1007/s10589-010-9330-x]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1625745
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