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Article Dans Une Revue Journal of Global Optimization Année : 2019

Conditional optimization of a noisy function using a kriging metamodel

Diarietou Sambakhe
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Lauriane Rouan
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Eric Goze
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Résumé

The efficient global optimization method is popular for the global optimization of computer-intensive black-box functions. Extensions exist, either for the optimization of noisy functions, or for the conditional optimization of deterministic functions, i.e. the search for the values of a subset of parameters that optimize the function conditionally to the values taken by another subset, which are fixed. A metaphor for conditional optimization is the search for a crest line. No method has yet been developed for the conditional optimization of noisy functions: this is what we propose in this article. Testing this new method on test functions showed that, in the case of a high level of noise on the function, the PEQI criterion that we propose is better than the PEI criterion usually implemented in such a situation.
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Dates et versions

hal-01981477 , version 1 (15-01-2019)

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Citer

Diarietou Sambakhe, Lauriane Rouan, Jean-Noel Bacro, Eric Goze. Conditional optimization of a noisy function using a kriging metamodel. Journal of Global Optimization, 2019, 73 (3), pp.615-636. ⟨10.1007/s10898-018-0716-0⟩. ⟨hal-01981477⟩
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