2016
DOI: 10.1016/j.cpc.2016.02.032
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Variance-based interaction index measuring heteroscedasticity

Abstract: This work is motivated by the need to deal with models with high-dimensional input spaces of real variables. One way to tackle high-dimensional problems is to identify interaction or non-interaction among input parameters. We propose a new variance-based sensitivity interaction index that can detect and quantify interactions among the input variables of mathematical functions and computer simulations. The computation is very similar to first-order sensitivity indices by Sobol'. The proposed interaction index c… Show more

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“…Fortunately, not all input parameters contribute equally to the output variability, in fact some might not have any impact at all [3]. The surrogate models can be used directly for evaluation-based sensitivity analysis methods such as Sobol indices [4], Interaction indices [5] or gradient-based methods. For some kernel-based modelling methods, analytical computation of sensitivity measures is possibly resulting in faster and more reliable estimation schemes, even before global accuracy is achieved [6].…”
Section: Goals and Usage Scenariosmentioning
confidence: 99%
“…Fortunately, not all input parameters contribute equally to the output variability, in fact some might not have any impact at all [3]. The surrogate models can be used directly for evaluation-based sensitivity analysis methods such as Sobol indices [4], Interaction indices [5] or gradient-based methods. For some kernel-based modelling methods, analytical computation of sensitivity measures is possibly resulting in faster and more reliable estimation schemes, even before global accuracy is achieved [6].…”
Section: Goals and Usage Scenariosmentioning
confidence: 99%