Adaptive use of replicated Latin Hypercube Designs for computing Sobol' sensitivity indices

03/17/2021
by   Guillaume Damblin, et al.
0

As recently pointed out in the field of Global Sensitivity Analysis (GSA) of computer simulations, the use of replicated Latin Hypercube Designs (rLHDs) is a cost-saving alternative to regular Monte Carlo sampling to estimate first-order Sobol' indices. Indeed, two rLHDs are sufficient to compute the whole set of those indices regardless of the number of input variables. This relies on a permutation trick which, however, only works within the class of estimators called Oracle 2. In the present paper, we show that rLHDs are still beneficial to another class of estimators, called Oracle 1, which often outperforms Oracle 2 for estimating small and moderate indices. Even though unlike Oracle 2 the computation cost of Oracle 1 depends on the input dimension, the permutation trick can be applied to construct an averaged (triple) Oracle 1 estimator whose great accuracy is presented on a numerical example. Thus, we promote an adaptive rLHDs-based Sobol' sensitivity analysis where the first stage is to compute the whole set of first-order indices by Oracle 2. If needed, the accuracy of small and moderate indices can then be reevaluated by the averaged Oracle 1 estimators. This strategy, cost-saving and guaranteeing the accuracy of estimates, is applied to a computer model from the nuclear field.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/15/2020

Monte Carlo estimators of first-and total-orders Sobol' indices

This study compares the performances of two sampling-based strategies fo...
research
03/01/2022

Variance-based sensitivity analysis: The quest for better estimators and designs between explorativity and economy

Variance-based sensitivity indices have established themselves as a refe...
research
04/07/2023

Estimating Shapley effects for moderate-to-large input dimensions

Sobol' indices and Shapley effects are attractive methods of assessing h...
research
03/03/2020

Global Sensitivity Analysis: a new generation of mighty estimators based on rank statistics

We propose a new statistical estimation framework for a large family of ...
research
01/14/2022

Extreme learning machines for variance-based global sensitivity analysis

Variance-based global sensitivity analysis (GSA) can provide a wealth of...
research
06/24/2019

Sensitivity Analysis and Generalized Chaos Expansions. Lower Bounds for Sobol indices

The so-called polynomial chaos expansion is widely used in computer expe...

Please sign up or login with your details

Forgot password? Click here to reset