Many mathematical models involve input parameters, which are not precisely known. Global sensitivity analysis aims to identify the parameters whose uncertainty has the largest impact on the variability of a quantity of interest (output of the model). One of the statistical tools used to quantify the influence of each input variable on the output is the Sobol sensitivity index. We consider the statistical estimation of this index from a finite sample of model outputs: we present two estimators and state a central limit theorem for each. We show that one of these estimators has an optimal asymptotic variance. We also generalize our results to the case where the true output ...
A novel theoretical and numerical framework for the estimation of Sobol sensitivity indices for mode...
International audienceIn this paper, we introduce new indices adapted to outputs valued in general m...
International audienceWe consider a functional linear model where the explicative variables are stoc...
Many mathematical models involve input parameters, which are not precisely known. Global s...
International audienceMany mathematical models involve input parameters, which are not precisely kno...
International audienceMany mathematical models involve input parameters, which are not precisely kno...
Sobol sensitivity indices assess how the output of a given mathematical model is sensitive to its i...
Many mathematical models involve input parameters, which are not precisely known. Global sensitivity...
Global sensitivity analysis often accompanies computer modeling to understand what are the importan...
Stochastic simulators such as Monte-Carlo estimators are widely used in science and engineering to s...
The estimation of variance-based importance measures (called Sobol' indices) of the input variables ...
International audienceLet X:=(X1,…,Xp) be random objects (the inputs), defined on some probability s...
The variance-based method of global sensitivity analysis based on Sobol' sensitivity indices has bec...
International audienceIn the field of sensitivity analysis, Sobol’ indices are sensitivity measures ...
This study compares the performances of two sampling-based strategies for the simultaneous estimatio...
A novel theoretical and numerical framework for the estimation of Sobol sensitivity indices for mode...
International audienceIn this paper, we introduce new indices adapted to outputs valued in general m...
International audienceWe consider a functional linear model where the explicative variables are stoc...
Many mathematical models involve input parameters, which are not precisely known. Global s...
International audienceMany mathematical models involve input parameters, which are not precisely kno...
International audienceMany mathematical models involve input parameters, which are not precisely kno...
Sobol sensitivity indices assess how the output of a given mathematical model is sensitive to its i...
Many mathematical models involve input parameters, which are not precisely known. Global sensitivity...
Global sensitivity analysis often accompanies computer modeling to understand what are the importan...
Stochastic simulators such as Monte-Carlo estimators are widely used in science and engineering to s...
The estimation of variance-based importance measures (called Sobol' indices) of the input variables ...
International audienceLet X:=(X1,…,Xp) be random objects (the inputs), defined on some probability s...
The variance-based method of global sensitivity analysis based on Sobol' sensitivity indices has bec...
International audienceIn the field of sensitivity analysis, Sobol’ indices are sensitivity measures ...
This study compares the performances of two sampling-based strategies for the simultaneous estimatio...
A novel theoretical and numerical framework for the estimation of Sobol sensitivity indices for mode...
International audienceIn this paper, we introduce new indices adapted to outputs valued in general m...
International audienceWe consider a functional linear model where the explicative variables are stoc...