Optimal algorithms for global optimization in case of unknown Lipschitz constant |
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Affiliation: | 1. Fachbereich Mathematik, University of Magdeburg, Gebaude 18, Universitaetsplatz 2, Magdeburg, Germany 39106;2. University of Jena, Mathematisches Institut, Earnst-Abbe-Platz 4, Jena, Germany 7740;3. Institut fur Angewandte Mathematik, Universitat Braunschweig, Pockelsstrasse 14, Technische, Braunschweig, Germany 31806 |
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Abstract: | We consider the global optimization problem for d-variate Lipschitz functions which, in a certain sense, do not increase too slowly in a neighborhood of the global minimizer(s). On these functions, we apply optimization algorithms which use only function values. We propose two adaptive deterministic methods. The first one applies in a situation when the Lipschitz constant L is known. The second one applies if L is unknown. We show that for an optimal method, adaptiveness is necessary and that randomization (Monte Carlo) yields no further advantage. Both algorithms presented have the optimal rate of convergence. |
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