Global sensitivity analysis for multivariate outputs based on multiple response Gaussian process model

Volume: 189, Pages: 287 - 298
Published: Sep 1, 2019
Abstract
The computational models in real-world applications commonly have multivariate dependent outputs of interest, and developing global sensitivity analysis techniques, so as to measure the effect of each input variable on each output as well as their dependence structure, has become a critical task. In this paper, a new moment-independent sensitivity index is firstly developed for quantifying the effect of each input variable on the dependence...
Paper Details
Title
Global sensitivity analysis for multivariate outputs based on multiple response Gaussian process model
Published Date
Sep 1, 2019
Volume
189
Pages
287 - 298
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