A classic Kriging or Gaussian process (GP) metamodel estimates the variance of its predictor by plugging-in the estimated GP (hyper)parameters; namely, the mean, variance, and covariances. The problem is that this predictor variance is biased. To solve this problem for deterministic simulations, we propose “conditional simulation” (CS), which gives predictions at an old point that in all bootstrap samples equal the observed value. CS accounts for the randomness of the estimated GP parameters. We use the CS predictor variance in the “expected improvement” criterion of “efficient global optimization” (EGO). To quantify the resulting small-sample performance, we experiment with multi-modal test functions. Our main conclusion is that EGO with c...
The Efficient Global Optimization (EGO) algorithm uses a conditional Gaus-sian Process (GP) to appro...
This chapter surveys two methods for the optimization of real-world systems that are modelled throug...
Kriging (Gaussian process, spatial correlation) metamodels approximate the Input/Output (I/O) functi...
This article uses a sequentialized experimental design to select simulation input combinations for g...
Abstract: This article surveys optimization of simulated systems. The simulation may be either deter...
Kriging (or Gaussian Process) metamodels may be analyzed through bootstrapping, which is a versatile...
This article surveys optimization of simulated systems. The simulation may be either deterministic o...
This survey considers the optimization of simulated systems. The simulation may be either determinis...
This article uses a sequentialized experimental design to select simulation input com- binations for...
This paper uses a sequentialized experimental design to select simulation input com- binations for g...
Kriging is a popular method for estimating the global optimum of a simulated system. Kriging approxi...
Kriging is a popular method for estimating the global optimum of a simulated system. Kriging approxi...
In this paper we investigate global optimization for black-box simulations using metamodels to guide...
Multi-objective optimization algorithms aim at finding Pareto-optimal solutions. Recovering Pareto f...
Multi-objective optimization algorithms aim at finding Pareto-optimal solutions. Recovering Pareto f...
The Efficient Global Optimization (EGO) algorithm uses a conditional Gaus-sian Process (GP) to appro...
This chapter surveys two methods for the optimization of real-world systems that are modelled throug...
Kriging (Gaussian process, spatial correlation) metamodels approximate the Input/Output (I/O) functi...
This article uses a sequentialized experimental design to select simulation input combinations for g...
Abstract: This article surveys optimization of simulated systems. The simulation may be either deter...
Kriging (or Gaussian Process) metamodels may be analyzed through bootstrapping, which is a versatile...
This article surveys optimization of simulated systems. The simulation may be either deterministic o...
This survey considers the optimization of simulated systems. The simulation may be either determinis...
This article uses a sequentialized experimental design to select simulation input com- binations for...
This paper uses a sequentialized experimental design to select simulation input com- binations for g...
Kriging is a popular method for estimating the global optimum of a simulated system. Kriging approxi...
Kriging is a popular method for estimating the global optimum of a simulated system. Kriging approxi...
In this paper we investigate global optimization for black-box simulations using metamodels to guide...
Multi-objective optimization algorithms aim at finding Pareto-optimal solutions. Recovering Pareto f...
Multi-objective optimization algorithms aim at finding Pareto-optimal solutions. Recovering Pareto f...
The Efficient Global Optimization (EGO) algorithm uses a conditional Gaus-sian Process (GP) to appro...
This chapter surveys two methods for the optimization of real-world systems that are modelled throug...
Kriging (Gaussian process, spatial correlation) metamodels approximate the Input/Output (I/O) functi...