The Shapley effects are global sensitivity indices: they quantify the impact of each input variable on the output variable in a model. In this work, we suggest new estimators of these sensitivity indices. When the input distribution is known, we investigate the already existing estimator and suggest a new one with a lower variance. Then, when the distribution of the inputs is unknown, we extend these estimators. Finally, we provide asymptotic properties of the estimators studied in this article
In this paper, we study sensitivity indices for independent groups of variables and we look at the p...
Sensitivity analysis is a powerful tool to study mathematical models and computer codes. It reveals ...
In this paper, we aim to estimate block-diagonal covariance matrices for Gaussian data in high dimen...
The Shapley effects are global sensitivity indices: they quantify the impact of each input variable ...
Shapley effects are attracting increasing attention as sensitivity measures. When the value function...
In global sensitivity analysis, the well-known Sobol’ sensitivity indices aim to quantify how the va...
International audienceThe global sensitivity analysis of a numerical model aims to quantify, by mean...
In this paper, we address the estimation of the sensitivity indices called "Shapley eects". These se...
In this paper, we study sensitivity indices for independent groups of variables and we look at the p...
Sensitivity analysis is a powerful tool to study mathematical models and computer codes. It reveals ...
In this paper, we aim to estimate block-diagonal covariance matrices for Gaussian data in high dimen...
The Shapley effects are global sensitivity indices: they quantify the impact of each input variable ...
Shapley effects are attracting increasing attention as sensitivity measures. When the value function...
In global sensitivity analysis, the well-known Sobol’ sensitivity indices aim to quantify how the va...
International audienceThe global sensitivity analysis of a numerical model aims to quantify, by mean...
In this paper, we address the estimation of the sensitivity indices called "Shapley eects". These se...
In this paper, we study sensitivity indices for independent groups of variables and we look at the p...
Sensitivity analysis is a powerful tool to study mathematical models and computer codes. It reveals ...
In this paper, we aim to estimate block-diagonal covariance matrices for Gaussian data in high dimen...