Many discrete simulation optimization techniques are unsuitable when the number of feasible solutions is large, or when the simulations are time-consuming. For problems with low dimensionality, Kriging-based algorithms may be used: in recent years, several algorithms have been proposed which extend the traditional Kriging-based methods (assuming deterministic outputs) to problems with noise. Our objective in this paper is to compare the relative performance of a number of these algorithms on a set of well-known test functions, assuming different patterns of heterogeneous noise. The conclusions and insights obtained may serve as a useful guideline for researchers aiming to apply Kriging-based methods to solve engineering and/or business prob...
This paper investigates the use of Kriging in random simulation when the simulation output variances...
This paper investigates the use of Kriging in random simulation when the simulation output variances...
This paper investigates the use of Kriging in random simulation when the simulation output variances...
Many discrete simulation optimization techniques are unsuitable when the number of feasible solution...
In recent years, several algorithms have been proposed which extend the traditional Kriging-based si...
In recent years, several algorithms have been proposed which extend the traditional Kriging-based si...
In this article we investigate the unconstrained optimization (minimization) of the performance of a...
In this poster, we evaluate the effectiveness of four kriging-based approaches for simulation optimi...
In this poster, we evaluate the effectiveness of four kriging-based approaches for simulation optimi...
In this paper, we evaluate the effectiveness of four kriging-based approaches for simulation optimiz...
Recently there has been a growing interest in using response surface techniques to expedite the glob...
Responses of many real-world problems can only be evaluated perturbed by noise. In order to make an ...
The use of kriging metamodels in simulation optimization has become increasingly popular during rece...
This paper investigates the use of Kriging in random simulation when the simulation output variances...
This paper investigates the use of Kriging in random simulation when the simulation output variances...
This paper investigates the use of Kriging in random simulation when the simulation output variances...
This paper investigates the use of Kriging in random simulation when the simulation output variances...
This paper investigates the use of Kriging in random simulation when the simulation output variances...
Many discrete simulation optimization techniques are unsuitable when the number of feasible solution...
In recent years, several algorithms have been proposed which extend the traditional Kriging-based si...
In recent years, several algorithms have been proposed which extend the traditional Kriging-based si...
In this article we investigate the unconstrained optimization (minimization) of the performance of a...
In this poster, we evaluate the effectiveness of four kriging-based approaches for simulation optimi...
In this poster, we evaluate the effectiveness of four kriging-based approaches for simulation optimi...
In this paper, we evaluate the effectiveness of four kriging-based approaches for simulation optimiz...
Recently there has been a growing interest in using response surface techniques to expedite the glob...
Responses of many real-world problems can only be evaluated perturbed by noise. In order to make an ...
The use of kriging metamodels in simulation optimization has become increasingly popular during rece...
This paper investigates the use of Kriging in random simulation when the simulation output variances...
This paper investigates the use of Kriging in random simulation when the simulation output variances...
This paper investigates the use of Kriging in random simulation when the simulation output variances...
This paper investigates the use of Kriging in random simulation when the simulation output variances...
This paper investigates the use of Kriging in random simulation when the simulation output variances...