This work investigates the problem of construction of designs for estimation and discrimination between competing linear models. In our framework, the unknown signal is observed with the addition of a noise and only a few evaluations of the noisy signal are available. The model selection is performed in a multi-resolution setting. In this setting, the locations of discrete sequential D and A designs are precisely contraint in a small number of explicit points. Hence, an efficient stochastic algorithm can be constructed that alternately improves the design and the model. Several numerical experiments illustrate the efficiency of our method for regression. One can also use this algorithm as a preliminary step to build response surfaces for se...
Adaptive Designs for Sequential Treatment Allocation presents a rigorous theoretical treatment of th...
Classical regression analysis is usually performed in two steps. In a first step an appropriate mode...
Here we present a sequential Monte Carlo (SMC) algorithm that can be used for any one-at-a-time Baye...
International audienceThis work investigates the problem of construction of designs for estimation a...
International audienceThis work investigates the problem of construction of designs for estimation a...
We present a new sequential algorithm to build both optimal design and model selection in a multi-re...
We present a new sequential algorithm to build both optimal design and model selection in a multi-re...
We propose and analyze sequential design methods for the problem of ranking several response surface...
We propose and analyze sequential design methods for the problem of ranking several response surface...
The problem of sequential design for a nonparametric regression with binary data is considered. The ...
The DKL-optimality criterion has been recently proposed for the dual problem of model discrimination...
Summary. We study the construction of experimental designs, the purpose of which is to aid in the di...
Properties of sequential designs for nonlinear regression and related problems are investigated. One...
Properties of sequential designs for nonlinear regression and related problems are investigated. One...
AbstractWe compare sequential and non-sequential designs for estimating linear functionals in the st...
Adaptive Designs for Sequential Treatment Allocation presents a rigorous theoretical treatment of th...
Classical regression analysis is usually performed in two steps. In a first step an appropriate mode...
Here we present a sequential Monte Carlo (SMC) algorithm that can be used for any one-at-a-time Baye...
International audienceThis work investigates the problem of construction of designs for estimation a...
International audienceThis work investigates the problem of construction of designs for estimation a...
We present a new sequential algorithm to build both optimal design and model selection in a multi-re...
We present a new sequential algorithm to build both optimal design and model selection in a multi-re...
We propose and analyze sequential design methods for the problem of ranking several response surface...
We propose and analyze sequential design methods for the problem of ranking several response surface...
The problem of sequential design for a nonparametric regression with binary data is considered. The ...
The DKL-optimality criterion has been recently proposed for the dual problem of model discrimination...
Summary. We study the construction of experimental designs, the purpose of which is to aid in the di...
Properties of sequential designs for nonlinear regression and related problems are investigated. One...
Properties of sequential designs for nonlinear regression and related problems are investigated. One...
AbstractWe compare sequential and non-sequential designs for estimating linear functionals in the st...
Adaptive Designs for Sequential Treatment Allocation presents a rigorous theoretical treatment of th...
Classical regression analysis is usually performed in two steps. In a first step an appropriate mode...
Here we present a sequential Monte Carlo (SMC) algorithm that can be used for any one-at-a-time Baye...