In many global optimization problems motivated by engineering applications, the number of function evaluations is severely limited by time or cost. To ensure that each of these evaluations usefully contributes to the localization of good candidates for the role of global minimizer, a stochastic model of the function can be built to conduct a sequential choice of evaluation points. Based on Gaussian processes and Kriging, the authors have recently introduced the informational approach to global optimization (IAGO) which provides a onestep optimal choice of evaluation points in terms of reduction of uncertainty on the location of the minimizers. To do so, the probability density of the minimizers is approximated using conditional simulations ...
This dissertation is driven by a question central to many industrial optimization problems : how to ...
A classic Kriging or Gaussian process (GP) metamodel estimates the variance of its predictor by plug...
We present a novel surrogate model-based global optimization framework allowing a large number of fu...
International audienceIn many global optimization problems motivated by engineering applications, th...
In many global optimization problems motivated by engineering applications, the number of function e...
International audienceWe consider the problem of optimizing a real-valued continuous function f, whi...
This paper uses a sequentialized experimental design to select simulation input combinations for glo...
Gaussian processes~(Kriging) are interpolating data-driven models that are frequently applied in var...
The Efficient Global Optimization (EGO) algorithm uses a conditional Gaus-sian Process (GP) to appro...
Abstract. We consider the problem of optimizing a real-valued con-tinuous function f, which is suppo...
International audienceRobust optimization is typically based on repeated calls to a deterministic si...
This paper uses a sequentialized experimental design to select simulation input com- binations for g...
This article uses a sequentialized experimental design to select simulation input com- binations for...
The optimization of expensive-to-evaluate functions generally relies on metamodel-based exploration ...
This dissertation is driven by a question central to many industrial optimization problems : how to ...
A classic Kriging or Gaussian process (GP) metamodel estimates the variance of its predictor by plug...
We present a novel surrogate model-based global optimization framework allowing a large number of fu...
International audienceIn many global optimization problems motivated by engineering applications, th...
In many global optimization problems motivated by engineering applications, the number of function e...
International audienceWe consider the problem of optimizing a real-valued continuous function f, whi...
This paper uses a sequentialized experimental design to select simulation input combinations for glo...
Gaussian processes~(Kriging) are interpolating data-driven models that are frequently applied in var...
The Efficient Global Optimization (EGO) algorithm uses a conditional Gaus-sian Process (GP) to appro...
Abstract. We consider the problem of optimizing a real-valued con-tinuous function f, which is suppo...
International audienceRobust optimization is typically based on repeated calls to a deterministic si...
This paper uses a sequentialized experimental design to select simulation input com- binations for g...
This article uses a sequentialized experimental design to select simulation input com- binations for...
The optimization of expensive-to-evaluate functions generally relies on metamodel-based exploration ...
This dissertation is driven by a question central to many industrial optimization problems : how to ...
A classic Kriging or Gaussian process (GP) metamodel estimates the variance of its predictor by plug...
We present a novel surrogate model-based global optimization framework allowing a large number of fu...