In practice, simulation analysts often change only one factor at a time, and use graphical analysis of the resulting Input/Output (I/O) data. The goal of this article is to change these traditional, naïve methods of design and analysis, because statistical theory proves that more information is obtained when applying Design Of Experiments (DOE) and linear regression analysis. Unfortunately, classic DOE and regression analysis assume a single simulation response that is normally and independently distributed with a constant variance; moreover, the regression (meta)model of the simulation model’s I/O behaviour is assumed to have residuals with zero means. This article addresses the following practical questions: (i) How realistic are these as...
This chapter gives a survey on the use of statistical designs for what-if analysis in simula- tion, ...
This paper proves that it is wrong to require that regressing a model's outputs on the observed real...
This tutorial explains the basics of linear regression models. especially low-order polynomials. and...
In practice, simulation analysts often change only one factor at a time, and use graphical analysis ...
In practice, simulation analysts often change only one factor at a time, and use graphical analysis ...
Many simulation practitioners can get more from their analyses by using the statistical theory on de...
This introductory tutorial gives a survey on the use of statistical designs for what if-or sensitivi...
Many simulation practitioners can get more from their analyses by using the statistical theory on de...
Classic linear regression models and their concomitant statistical designs assume a univariate respo...
This introductory tutorial gives a survey on the use of statistical designs for what if-or sensitivi...
AbstractAn example is given of the use of graphical methods in the analysis of a simulation experime...
This chapter gives a survey on the use of statistical designs for what-if analysis in simula- tion, ...
This tutorial explains the basics of linear regression models. especially low-order polynomials. and...
This paper gives a survey on how to validate simulation models through the application of mathematic...
This tutorial reviews the design and analysis of simulation experiments. These experiments may have ...
This chapter gives a survey on the use of statistical designs for what-if analysis in simula- tion, ...
This paper proves that it is wrong to require that regressing a model's outputs on the observed real...
This tutorial explains the basics of linear regression models. especially low-order polynomials. and...
In practice, simulation analysts often change only one factor at a time, and use graphical analysis ...
In practice, simulation analysts often change only one factor at a time, and use graphical analysis ...
Many simulation practitioners can get more from their analyses by using the statistical theory on de...
This introductory tutorial gives a survey on the use of statistical designs for what if-or sensitivi...
Many simulation practitioners can get more from their analyses by using the statistical theory on de...
Classic linear regression models and their concomitant statistical designs assume a univariate respo...
This introductory tutorial gives a survey on the use of statistical designs for what if-or sensitivi...
AbstractAn example is given of the use of graphical methods in the analysis of a simulation experime...
This chapter gives a survey on the use of statistical designs for what-if analysis in simula- tion, ...
This tutorial explains the basics of linear regression models. especially low-order polynomials. and...
This paper gives a survey on how to validate simulation models through the application of mathematic...
This tutorial reviews the design and analysis of simulation experiments. These experiments may have ...
This chapter gives a survey on the use of statistical designs for what-if analysis in simula- tion, ...
This paper proves that it is wrong to require that regressing a model's outputs on the observed real...
This tutorial explains the basics of linear regression models. especially low-order polynomials. and...