Gaussian processes~(Kriging) are interpolating data-driven models that are frequently applied in various disciplines. Often, Gaussian processes are trained on datasets and are subsequently embedded as surrogate models in optimization problems. These optimization problems are nonconvex and global optimization is desired. However, previous literature observed computational burdens limiting deterministic global optimization to Gaussian processes trained on few data points. We propose a reduced-space formulation for deterministic global optimization with trained Gaussian processes embedded. For optimization, the branch-and-bound solver branches only on the degrees of freedom and McCormick relaxations are propagated through explicit Gaussian pro...
An important goal of simulation is optimization of the corresponding real system. We focus on simula...
In many global optimization problems motivated by engineering applications, the number of function e...
This paper uses a sequentialized experimental design to select simulation input com- binations for g...
This work presents a new procedure for obtaining predictive distributions in the context of Gaussian...
Bayesian optimization is a powerful global optimization technique for expensive black-box functions....
plenary presentationInternational audienceBayesian Optimization (BO) is a popular approach to the gl...
International audienceWe consider the problem of optimizing a real-valued continuous function f, whi...
Abstract. We consider the problem of optimizing a real-valued con-tinuous function f, which is suppo...
Bayesian optimization is a powerful global op-timization technique for expensive black-box functions...
The Efficient Global Optimization (EGO) algorithm uses a conditional Gaus-sian Process (GP) to appro...
This work presents a new procedure for obtaining predictive distributions in the context of Gaussian...
The simulation of complex physics models may lead to enormous computer running times. Since the simu...
We present a novel surrogate model-based global optimization framework allowing a large number of fu...
Bayesian Optimization using Gaussian Processes is a popular approach to deal with the optimization o...
This paper uses a sequentialized experimental design to select simulation input combinations for glo...
An important goal of simulation is optimization of the corresponding real system. We focus on simula...
In many global optimization problems motivated by engineering applications, the number of function e...
This paper uses a sequentialized experimental design to select simulation input com- binations for g...
This work presents a new procedure for obtaining predictive distributions in the context of Gaussian...
Bayesian optimization is a powerful global optimization technique for expensive black-box functions....
plenary presentationInternational audienceBayesian Optimization (BO) is a popular approach to the gl...
International audienceWe consider the problem of optimizing a real-valued continuous function f, whi...
Abstract. We consider the problem of optimizing a real-valued con-tinuous function f, which is suppo...
Bayesian optimization is a powerful global op-timization technique for expensive black-box functions...
The Efficient Global Optimization (EGO) algorithm uses a conditional Gaus-sian Process (GP) to appro...
This work presents a new procedure for obtaining predictive distributions in the context of Gaussian...
The simulation of complex physics models may lead to enormous computer running times. Since the simu...
We present a novel surrogate model-based global optimization framework allowing a large number of fu...
Bayesian Optimization using Gaussian Processes is a popular approach to deal with the optimization o...
This paper uses a sequentialized experimental design to select simulation input combinations for glo...
An important goal of simulation is optimization of the corresponding real system. We focus on simula...
In many global optimization problems motivated by engineering applications, the number of function e...
This paper uses a sequentialized experimental design to select simulation input com- binations for g...