Two approaches addressing response surface approximation errors due to model inadequacy (bias error) are presented, and a design of experiments minimizing the maximal bias error is proposed. Both approaches assume that the functional form of the true model is known and seek, at each point in design space, worst case bounds on the absolute error. The rst approach is implemented prior to data generation. This data independent error bound can identify locations in the design space where the accuracy of the approximation tted on a given design of experiments may be poor. The data independent error bound can easily be implemented in a search for a design of experiments that minimize the bias error bound as it requires very little computat...
Experiments designed to investigate the effect of several factors on a process have wide application...
Response Surface Models (RSM) based on data from designed numerical experiments are useful as approx...
We study model selection strategies based on penalized empirical loss minimization. We point out a...
This paper proposes a generalized pointwise bias error bounds estimation method for polynomial-based...
Response surface approximations offer an effective way to solve complex problems. However limitation...
This paper presents a supplementary, valuable property of the minimum bias estimation (MBE) procedur...
Abstract. A conditionally contaminated linear model Y(t) = x(t)'P + Z(t) is considered where t...
This paper addresses the issue of designing experiments for a metamodel that needs to be accurate fo...
International audienceAuthor(s): Victor Picheny, Postdoctorate Researcher Department of Applied Math...
This paper formulates the general methodology for estimating the bias error distribution of a device...
This article considers the selection of experimental designs for the estimation of second-order resp...
In science and engineering, there is often uncertainty in the linear model assumed for a response wh...
We consider the problem of identifying the optimal point of an objective in simulation experiments w...
The use of Response Surface Approximation (RSA) within an approximate optimization framework for the...
In structural optimization, usually an approximation concept is introduced as interface between (FEM...
Experiments designed to investigate the effect of several factors on a process have wide application...
Response Surface Models (RSM) based on data from designed numerical experiments are useful as approx...
We study model selection strategies based on penalized empirical loss minimization. We point out a...
This paper proposes a generalized pointwise bias error bounds estimation method for polynomial-based...
Response surface approximations offer an effective way to solve complex problems. However limitation...
This paper presents a supplementary, valuable property of the minimum bias estimation (MBE) procedur...
Abstract. A conditionally contaminated linear model Y(t) = x(t)'P + Z(t) is considered where t...
This paper addresses the issue of designing experiments for a metamodel that needs to be accurate fo...
International audienceAuthor(s): Victor Picheny, Postdoctorate Researcher Department of Applied Math...
This paper formulates the general methodology for estimating the bias error distribution of a device...
This article considers the selection of experimental designs for the estimation of second-order resp...
In science and engineering, there is often uncertainty in the linear model assumed for a response wh...
We consider the problem of identifying the optimal point of an objective in simulation experiments w...
The use of Response Surface Approximation (RSA) within an approximate optimization framework for the...
In structural optimization, usually an approximation concept is introduced as interface between (FEM...
Experiments designed to investigate the effect of several factors on a process have wide application...
Response Surface Models (RSM) based on data from designed numerical experiments are useful as approx...
We study model selection strategies based on penalized empirical loss minimization. We point out a...