International audienceWe consider experimental design for the prediction of a realization of a second-order random field Z with known covariance function, or kernel, K. When the mean of Z is known, the integrated mean squared error of the best linear pre-dictor, approximated by spectral truncation, coincides with that obtained with a Bayesian linear model. The machinery of approximate design theory is then available to determine optimal design measures, from which exact designs (collections of sites where to observe Z) can be extracted. The situation is more complex in the presence of an unknown linear parametric trend, and we show how a Bayesian linear model especially adapted to the trend can be obtained via a suitable projection of Z whi...
When numerical simulations are time consuming, the simulator is replaced by a simple (meta-)model wh...
This paper deals with optimal designs for Gaussian random fields with constant trend and exponential...
This paper discusses the problem of determining optimal designs for regression models, when the obse...
We consider experimental design for the prediction of a realization of a second-order random field Z...
We consider experimental design for the prediction of a realization of a second-order random field Z...
International audienceThe construction of optimal designs for random-field interpolation models via ...
International audienceWe address the problem of computing IMSE-optimal designs for random field inte...
The construction of optimal designs for random-field interpolation models via convex design theory i...
The construction of optimal designs for random-field interpolation models via convex design theory i...
International audienceWe address the problem of computing IMSE (Integrated Mean-Squared Error) optim...
abstract: Optimal experimental design for generalized linear models is often done using a pseudo-Bay...
summary:A random process (field) with given parametrized mean and covariance function is observed at...
summary:A random process (field) with given parametrized mean and covariance function is observed at...
none2This paper deals with optimal designs for Gaussian random fields with constant trend and expone...
This paper describes an approach for selecting instances in regression problems in the cases where ...
When numerical simulations are time consuming, the simulator is replaced by a simple (meta-)model wh...
This paper deals with optimal designs for Gaussian random fields with constant trend and exponential...
This paper discusses the problem of determining optimal designs for regression models, when the obse...
We consider experimental design for the prediction of a realization of a second-order random field Z...
We consider experimental design for the prediction of a realization of a second-order random field Z...
International audienceThe construction of optimal designs for random-field interpolation models via ...
International audienceWe address the problem of computing IMSE-optimal designs for random field inte...
The construction of optimal designs for random-field interpolation models via convex design theory i...
The construction of optimal designs for random-field interpolation models via convex design theory i...
International audienceWe address the problem of computing IMSE (Integrated Mean-Squared Error) optim...
abstract: Optimal experimental design for generalized linear models is often done using a pseudo-Bay...
summary:A random process (field) with given parametrized mean and covariance function is observed at...
summary:A random process (field) with given parametrized mean and covariance function is observed at...
none2This paper deals with optimal designs for Gaussian random fields with constant trend and expone...
This paper describes an approach for selecting instances in regression problems in the cases where ...
When numerical simulations are time consuming, the simulator is replaced by a simple (meta-)model wh...
This paper deals with optimal designs for Gaussian random fields with constant trend and exponential...
This paper discusses the problem of determining optimal designs for regression models, when the obse...