Global sensitivity analysis for stochastic simulators based on generalized lambda surrogate models

05/04/2020
by   X. Zhu, et al.
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Global sensitivity analysis aims at quantifying the impact of input variability onto the variation of the response of a computational model. It has been widely applied to deterministic simulators, for which a set of input parameters has a unique corresponding output value. Stochastic simulators, however, have intrinsic randomness and give different results when run twice with the same input parameters. Due to this random nature, conventional Sobol' indices can be extended to stochastic simulators in different ways. In this paper, we discuss three possible extensions and focus on those that only depend on the statistical dependence between input and output. This choice ignores the detailed data generating process involving the internal randomness, and can thus be applied to a wider class of problems. We propose to use the generalized lambda model to emulate the response distribution of stochastic simulators. Such a surrogate can be constructed in a non-intrusive manner without the need for replications. The proposed method is applied to three examples including two case studies in finance and epidemiology. The results confirm the convergence of the approach for estimating the sensitivity indices even with the presence of strong heteroscedasticity and small signal-to-noise ratio.

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