A multivariate non-parametric kernel estimator for global sensitivity analysis |
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Authors: | Lamia Djerroud Tristan Senga Kiessé Smail Adjabi |
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Institution: | 1. Department of Operational Research, Research Unit LaMOS, University of Bejaia, Algeria;2. UMR SAS, INRA, Agrocampus Ouest, Rennes, France;3. GeM, University of Nantes, GeM Laboratory, Chair of Civil Engineering and Eco-Construction, Saint-Nazaire, France |
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Abstract: | The fact of estimating how a model output is influenced by the variations of inputs has become an important problematic in reliability and sensitivity analysis. This article is interested in estimating sensitivity indices useful to quantify the contribution of inputs to the variance of model output. A multivariate mixed kernel estimator is investigated since, until now, discrete and continuous inputs have been separately considered in kernel estimation of sensitivity indices. To illustrate the differences between the influence of mixed, discrete, and continuous inputs, analytical expressions of Sobol sensitivity indices are expressed in these three cases for the Ishigami test function. Besides, the performance of the mixed kernel estimator is illustrated through simulations in which the Bayesian procedure is applied for bandwidth parameter choice. An application is also realized on a real example. Finally, the use of an appropriate kernel estimator according to the type of inputs is found to be influential on the accuracy of sensitivity indices estimates. |
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Keywords: | Analysis of variance Associated kernel Non-parametric regression Sensitivity indices |
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