International audienceNumerical black-box optimization problems occur frequently in engineering design, medical applications, finance, and many other areas of our society's interest. Often, those problems have expensive-to-calculate objective functions for example if the solution evaluation is based on numerical simulations. Starting with the seminal paper of Jones et al. on Efficient Global Optimization (EGO), several algorithms tailored towards expensive numerical black-box problems have been proposed. The recent MATLAB toolbox MATSuMoTo (short for MATLAB Surrogate Model Toolbox) is the focus of this paper and is benchmarked within the Black-box Optimization Benchmarking framework BBOB. A comparison with other already previously benchmark...
There exists many applications with so-called costly problems, which means that the objective functi...
Quantifying and comparing performance of optimization algorithms is one important aspect of research...
Black-box optimization algorithms optimize a tness function f without knowl-edge of the specic param...
MATSuMoTo is the MATLAB Surrogate Model Toolbox for computationally ex-pensive, black-box, global op...
International audienceExisting studies in black-box optimization for machine learning suffer from lo...
This paper introduces a surrogate model based algorithm for computationally expensive mixed-integer ...
Three derivative-free global optimization methods are developed based on radial basis functions (RBF...
Abstract. This paper presents a new algorithm for derivative-free optimization of expensive black-bo...
Surrogate algorithms such as Bayesian optimisation are especially designed for black-box optimisatio...
International audienceIn this paper, we survey methods that are currently used in black-box optimiza...
pp. 1689-1696This paper presents results of the BBOB-2009 benchmark- ing of 31 search algorithms on ...
When optimizing black-box functions, little information is available to assist the user in selecting...
Research on new optimization algorithms is often funded based on the motivation that such algorithms...
Quantifying and comparing performance of optimization algorithms is one important aspect of research...
This paper presents results of the BBOB-2009 benchmark-ing of 31 search algorithms on 24 noiseless f...
There exists many applications with so-called costly problems, which means that the objective functi...
Quantifying and comparing performance of optimization algorithms is one important aspect of research...
Black-box optimization algorithms optimize a tness function f without knowl-edge of the specic param...
MATSuMoTo is the MATLAB Surrogate Model Toolbox for computationally ex-pensive, black-box, global op...
International audienceExisting studies in black-box optimization for machine learning suffer from lo...
This paper introduces a surrogate model based algorithm for computationally expensive mixed-integer ...
Three derivative-free global optimization methods are developed based on radial basis functions (RBF...
Abstract. This paper presents a new algorithm for derivative-free optimization of expensive black-bo...
Surrogate algorithms such as Bayesian optimisation are especially designed for black-box optimisatio...
International audienceIn this paper, we survey methods that are currently used in black-box optimiza...
pp. 1689-1696This paper presents results of the BBOB-2009 benchmark- ing of 31 search algorithms on ...
When optimizing black-box functions, little information is available to assist the user in selecting...
Research on new optimization algorithms is often funded based on the motivation that such algorithms...
Quantifying and comparing performance of optimization algorithms is one important aspect of research...
This paper presents results of the BBOB-2009 benchmark-ing of 31 search algorithms on 24 noiseless f...
There exists many applications with so-called costly problems, which means that the objective functi...
Quantifying and comparing performance of optimization algorithms is one important aspect of research...
Black-box optimization algorithms optimize a tness function f without knowl-edge of the specic param...