New improvements in the use of dependence measures for sensitivity analysis and screening

Type: Article

Publication Date: 2016-02-26

Citations: 48

DOI: https://doi.org/10.1080/00949655.2016.1149854

Abstract

Physical phenomena are commonly modelled by time consuming numerical simulators, function of many uncertain parameters whose influences can be measured via a global sensitivity analysis. The usual variance-based indices require too many simulations, especially as the inputs are numerous. To address this limitation, we consider recent advances in dependence measures, focusing on the distance correlation and the Hilbert–Schmidt independence criterion. We study and use these indices for a screening purpose. Numerical tests reveal differences between variance-based indices and dependence measures. Then, two approaches are proposed to use the latter for a screening purpose. The first approach uses independence tests, with existing asymptotic versions and spectral extensions; bootstrap versions are also proposed. The second considers a linear model with dependence measures, coupled to a bootstrap selection method or a Lasso penalization. Numerical experiments show their potential in the presence of many non-influential inputs and give successful results for a nuclear reliability application.

Locations

  • Journal of Statistical Computation and Simulation - View
  • arXiv (Cornell University) - View - PDF
  • HAL (Le Centre pour la Communication Scientifique Directe) - View - PDF

Similar Works

Action Title Year Authors
+ New improvements in the use of dependence measures for sensitivity analysis and screening 2014 Matthias De Lozzo
Amandine Marrel
+ New improvements in the use of dependence measures for sensitivity analysis and screening 2014 Matthias De Lozzo
Amandine Marrel
+ New statistical methodology for second level global sensitivity analysis 2019 Anouar Meynaoui
Amandine Marrel
Béatrice Laurent
+ Second-level global sensitivity analysis of numerical simulators with application to an accident scenario in a sodium-cooled fast reactor 2022 Anouar Meynaoui
Amandine Marrel
Béatrice Laurent
+ Target and Conditional Sensitivity Analysis with Emphasis on Dependence Measures 2018 Hugo Raguet
Amandine Marrel
+ PDF Chat Second‐level global sensitivity analysis of numerical simulators with application to an accident scenario in a sodium‐cooled fast reactor 2022 Anouar Meynaoui
Amandine Marrel
Béatrice Laurent
+ PDF Chat Fighting the Curse of Sparsity: Probabilistic Sensitivity Measures From Cumulative Distribution Functions 2020 Elmar Plischke
Emanuele Borgonovo
+ PDF Chat Sensitivity maps of the Hilbert–Schmidt independence criterion 2017 Adrián Pérez-Suay
Gustau Camps‐Valls
+ PDF Chat Global sensitivity analysis with dependence measures 2014 Sébastien da Veiga
+ Advanced methodology for uncertainty propagation in computer experiments with large number of inputs 2018 Amandine Marrel
Bertrand Iooss
+ PDF Chat Kernel-based Sensitivity Analysis for (Excursion) Sets 2024 Noé Fellmann
C. Blanchet‐Scalliet
Céline Helbert
Adrien Spagnol
Delphine Sinoquet
+ Global Sensitivity Analysis with Dependence Measures 2013 Sébastien da Veiga
+ PDF Chat Global Sensitivity Analysis with Dependence Measures 2013 Sébastien da Veiga
+ Sensitivity Maps of the Hilbert-Schmidt Independence Criterion 2016 Adrián Pérez-Suay
Gustau Camps‐Valls
+ Sensitivity Maps of the Hilbert-Schmidt Independence Criterion 2016 Adrián Pérez-Suay
Gustau Camps‐Valls
+ PDF Chat Generalized Sobol sensitivity indices for dependent variables: numerical methods 2014 Gaëlle Chastaing
Fabrice Gamboa
Clémentine Prieur
+ Lasso Monte Carlo, a Variation on Multi Fidelity Methods for High Dimensional Uncertainty Quantification 2022 Arnau Albà
Romana Boiger
D. Rochman
Andreas Adelmann
+ PDF Chat Lasso Monte Carlo, a Variation on Multi Fidelity Methods for High Dimensional Uncertainty Quantification 2023 Arnau Albà
Romana Boiger
Dimitri Rochman
Andreas Adelmann
+ PDF Chat Sensitivity to Serial Dependency of Input Processes: A Robust Approach 2017 Henry Lam
+ Generalized Sobol sensitivity indices for dependent variables: numerical methods 2013 Gaëlle Chastaing
Clémentine Prieur
Fabrice Gamboa

Works That Cite This (16)

Action Title Year Authors
+ STATISTICAL IDENTIFICATION OF PENALIZING CONFIGURATIONS IN HIGH-DIMENSIONAL THERMAL-HYDRAULIC NUMERICAL EXPERIMENTS: THE ICSCREAM METHODOLOGY 2020 Amandine Marrel
Bertrand Iooss
Vincent Chabridon
+ PDF Chat High-Dimensional Feature Selection by Feature-Wise Kernelized Lasso 2013 Makoto Yamada
Wittawat Jitkrittum
Leonid Sigal
Eric P. Xing
Masashi Sugiyama
+ Causal Discovery with Reinforcement Learning 2019 Shengyu Zhu
Ignavier Ng
Zhitang Chen
+ Advanced methodology for uncertainty propagation in computer experiments with large number of inputs. 2018 Bertrand Iooss
Amandine Marrel
+ An efficient methodology for the analysis and modeling of computer experiments with large number of inputs 2017 Bertrand Iooss
Amandine Marrel
+ PDF Chat Sensitivity maps of the Hilbert–Schmidt independence criterion 2017 Adrián Pérez-Suay
Gustau Camps‐Valls
+ PDF Chat Fighting the Curse of Sparsity: Probabilistic Sensitivity Measures From Cumulative Distribution Functions 2020 Elmar Plischke
Emanuele Borgonovo
+ PDF Chat Global Sensitivity Analysis for Optimization with Variable Selection 2019 Adrien Spagnol
Rodolphe Le Riche
Sébastien da Veiga
+ The ICSCREAM methodology: Identification of penalizing configurations in computer experiments using screening and metamodel -- Applications in thermal-hydraulics 2020 Amandine Marrel
Bertrand Iooss
Vincent Chabridon
+ PDF Chat A Common Rationale for Global Sensitivity Measures and Their Estimation 2016 Emanuele Borgonovo
Gordon B. Hazen
Elmar Plischke