Variance-based sensitivity indices have established themselves as a reference amongst practitioners of sensitivity analysis of model outputs. A variance-based sensitivity analysis typically produces the first-order sensitivity indices \(S_j\)and the so-called total-effect sensitivity indices \(T_j\) for the uncertain factors of the mathematical model under analysis. Computational cost is critical in sensitivity analysis. This cost depends upon the number of model evaluations needed to obtain stable and accurate values of the estimates. While efficient estimation procedures are available for \(S_j\) (Tarantola et al., 2006), this availability is less the case for \(T_j\) (Iooss and Lemaître, 2015). When estimating these indices, one can ei...
Sensitivity analysis assesses the influence of input parameters on the conclusion of a model. Tradit...
"Estimates of poverty and inequality are often based on application of a single equivalence scale, d...
Weighting methods are popular tools for estimating causal effects; assessing their robustness under ...
Variance-based sensitivity indices have established themselves as a reference among practitioners of...
Variance based sensitivity indices have established themselves as a reference among practitioners of...
Variance-based sensitivity indices have established themselves as a reference among practitioners of...
Variance based methods have assessed themselves as versatile and effective among the various availa...
Computational models are intensively used in engineering for risk analysis or prediction of future o...
Variance-based sensitivity indices play an important role in scientific computation and data mining,...
Sensitivity analysis is comprised of techniques to quantify the effects of the input variables on a ...
Uncertainty quantification and global sensitivity analysis are indispensable for patient-specific ap...
Uncertainty quantification and global sensitivity analysis are indispensable for patient-specific ap...
Several methods are proposed in the literature to perform global sensitivity analysis of computer mo...
Fourteen years after Science’s review of sensitivity analysis methods in 1989 (System analysis at mo...
Existing guidelines for impact assessment recommend that mathematical modelling of real or man-made ...
Sensitivity analysis assesses the influence of input parameters on the conclusion of a model. Tradit...
"Estimates of poverty and inequality are often based on application of a single equivalence scale, d...
Weighting methods are popular tools for estimating causal effects; assessing their robustness under ...
Variance-based sensitivity indices have established themselves as a reference among practitioners of...
Variance based sensitivity indices have established themselves as a reference among practitioners of...
Variance-based sensitivity indices have established themselves as a reference among practitioners of...
Variance based methods have assessed themselves as versatile and effective among the various availa...
Computational models are intensively used in engineering for risk analysis or prediction of future o...
Variance-based sensitivity indices play an important role in scientific computation and data mining,...
Sensitivity analysis is comprised of techniques to quantify the effects of the input variables on a ...
Uncertainty quantification and global sensitivity analysis are indispensable for patient-specific ap...
Uncertainty quantification and global sensitivity analysis are indispensable for patient-specific ap...
Several methods are proposed in the literature to perform global sensitivity analysis of computer mo...
Fourteen years after Science’s review of sensitivity analysis methods in 1989 (System analysis at mo...
Existing guidelines for impact assessment recommend that mathematical modelling of real or man-made ...
Sensitivity analysis assesses the influence of input parameters on the conclusion of a model. Tradit...
"Estimates of poverty and inequality are often based on application of a single equivalence scale, d...
Weighting methods are popular tools for estimating causal effects; assessing their robustness under ...