A standard objective in computer experiments is to approximate the behaviour of an unknown function on a compact domain from a few evaluations inside the domain. When little is known about the function, space-filling design is advisable: typically, points of evaluation spread out across the available space are obtained by minimizing a geometrical (for instance, covering radius) or a discrepancy criterion measuring distance to uniformity. The paper investigates connections between design for integration (quadrature design), construction of the (continuous) BLUE for the location model, space-filling design, and minimization of energy (kernel discrepancy) for signed measures. Integrally strictly positive definite kernels define strictly convex...
Optimal experiment design (OED) aims to optimize the information content of experimental observation...
International audienceThis paper presents a method for constructing optimal design of experiments (D...
This thesis progresses Bayesian experimental design by developing novel methodologies and extensions...
International audienceWe consider a continuous extension of a regularized version of the minimax, or...
<p>A new space-filling design, called minimum energy design (MED), is proposed to explore unknown re...
Space-filling designs are commonly used in computer experiments aiming to build statistical surrogat...
A good experimental design in a non-parametric framework, such as Gaussian process modelling in comp...
This book is the modern first treatment of experimental designs, providing a comprehensive introduct...
An iterative Bayesian optimization technique is presented to find spatial designs of data that carry...
The paper develops an approach to optimal design problems based on application of abstract optimisat...
<p>Many optimal experimental designs depend on one or more unknown model parameters. In such cases, ...
The construction of decision-theoretical Bayesian designs for realistically complex nonlinear models...
The design of an experiment can be always be considered at least implicitly Bayesian, with prior kno...
Many optimal experimental designs depend on one or more unknown model parameters. In such cases, it ...
Space filling designs, which satisfy a uniformity property, are widely used in computer experiments....
Optimal experiment design (OED) aims to optimize the information content of experimental observation...
International audienceThis paper presents a method for constructing optimal design of experiments (D...
This thesis progresses Bayesian experimental design by developing novel methodologies and extensions...
International audienceWe consider a continuous extension of a regularized version of the minimax, or...
<p>A new space-filling design, called minimum energy design (MED), is proposed to explore unknown re...
Space-filling designs are commonly used in computer experiments aiming to build statistical surrogat...
A good experimental design in a non-parametric framework, such as Gaussian process modelling in comp...
This book is the modern first treatment of experimental designs, providing a comprehensive introduct...
An iterative Bayesian optimization technique is presented to find spatial designs of data that carry...
The paper develops an approach to optimal design problems based on application of abstract optimisat...
<p>Many optimal experimental designs depend on one or more unknown model parameters. In such cases, ...
The construction of decision-theoretical Bayesian designs for realistically complex nonlinear models...
The design of an experiment can be always be considered at least implicitly Bayesian, with prior kno...
Many optimal experimental designs depend on one or more unknown model parameters. In such cases, it ...
Space filling designs, which satisfy a uniformity property, are widely used in computer experiments....
Optimal experiment design (OED) aims to optimize the information content of experimental observation...
International audienceThis paper presents a method for constructing optimal design of experiments (D...
This thesis progresses Bayesian experimental design by developing novel methodologies and extensions...