The estimation of variance-based importance measures (called Sobol' indices) of the input variables of a numerical model can require a large number of model evaluations. It turns to be unacceptable for high-dimensional model involving a large number of input variables (typically more than ten). Recently, Sobol and Kucherenko have proposed the Derivative-based Global Sensitivity Measures (DGSM), defined as the integral of the squared derivatives of the model output, showing that it can help to solve the problem of dimensionality in some cases. We provide a general inequality link between DGSM and total Sobol' indices for input variables belonging to the class of Boltzmann probability measures, thus extending the previous results of Sobol and...
International audienceThe hierarchically orthogonal functional decomposition of any measurable funct...
The variance-based method of global sensitivity analysis based on Sobol' sensitivity indices has bec...
International audienceMany mathematical models involve input parameters, which are not precisely kno...
The estimation of variance-based importance measures (called Sobol' indices) of the input variables ...
AbstractWe introduce new global sensitivity measures called derivative based global sensitivity meas...
International audienceThe method of derivative based global sensitivity measures (DGSM) has recently...
Global sensitivity analysis is used to quantify the influence of input variables on a numerical mode...
A novel theoretical and numerical framework for the estimation of Sobol sensitivity indices for mode...
Sensitivity analysis is an essential tool in the development of robust models for engineering, physi...
Distribution-based global sensitivity analysis (GSA), such as variance-based and entropy-based appro...
The variance-based method of global sensitivity indices based on Sobol' sensitivity indices became v...
International audienceThis paper deals with global sensitivity analysis of computer model output. Gi...
Sensitivity analysis plays an important role in reliability evaluation, structural optimization and ...
The study introduces two new alternatives for global response sensitivity analysis based on the appl...
This paper deals with global sensitivity analysis of computer model output. Given an independent inp...
International audienceThe hierarchically orthogonal functional decomposition of any measurable funct...
The variance-based method of global sensitivity analysis based on Sobol' sensitivity indices has bec...
International audienceMany mathematical models involve input parameters, which are not precisely kno...
The estimation of variance-based importance measures (called Sobol' indices) of the input variables ...
AbstractWe introduce new global sensitivity measures called derivative based global sensitivity meas...
International audienceThe method of derivative based global sensitivity measures (DGSM) has recently...
Global sensitivity analysis is used to quantify the influence of input variables on a numerical mode...
A novel theoretical and numerical framework for the estimation of Sobol sensitivity indices for mode...
Sensitivity analysis is an essential tool in the development of robust models for engineering, physi...
Distribution-based global sensitivity analysis (GSA), such as variance-based and entropy-based appro...
The variance-based method of global sensitivity indices based on Sobol' sensitivity indices became v...
International audienceThis paper deals with global sensitivity analysis of computer model output. Gi...
Sensitivity analysis plays an important role in reliability evaluation, structural optimization and ...
The study introduces two new alternatives for global response sensitivity analysis based on the appl...
This paper deals with global sensitivity analysis of computer model output. Given an independent inp...
International audienceThe hierarchically orthogonal functional decomposition of any measurable funct...
The variance-based method of global sensitivity analysis based on Sobol' sensitivity indices has bec...
International audienceMany mathematical models involve input parameters, which are not precisely kno...