On Active Learning for Gaussian Process-based Global Sensitivity Analysis

08/27/2023
by   Mohit Chauhan, et al.
0

This paper explores the application of active learning strategies to adaptively learn Sobol indices for global sensitivity analysis. We demonstrate that active learning for Sobol indices poses unique challenges due to the definition of the Sobol index as a ratio of variances estimated from Gaussian process surrogates. Consequently, learning strategies must either focus on convergence in the numerator or the denominator of this ratio. However, rapid convergence in either one does not guarantee convergence in the Sobol index. We propose a novel strategy for active learning that focuses on resolving the main effects of the Gaussian process (associated with the numerator of the Sobol index) and compare this with existing strategies based on convergence in the total variance (the denominator of the Sobol index). The new strategy, implemented through a new learning function termed the MUSIC (minimize uncertainty in Sobol index convergence), generally converges in Sobol index error more rapidly than the existing strategies based on the Expected Improvement for Global Fit (EIGF) and the Variance Improvement for Global Fit (VIGF). Both strategies are compared with simple sequential random sampling and the MUSIC learning function generally converges most rapidly for low-dimensional problems. However, for high-dimensional problems, the performance is comparable to random sampling. The new learning strategy is demonstrated for a practical case of adaptive experimental design for large-scale Boundary Layer Wind Tunnel experiments.

READ FULL TEXT

page 13

page 20

research
04/13/2023

Adaptive active subspace-based metamodeling for high-dimensional reliability analysis

To address the challenges of reliability analysis in high-dimensional pr...
research
07/20/2021

Adaptively Sampling via Regional Variance-Based Sensitivities

Inspired by the well-established variance-based methods for global sensi...
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
11/10/2009

Active Learning for Mention Detection: A Comparison of Sentence Selection Strategies

We propose and compare various sentence selection strategies for active ...
research
08/03/2016

A supermartingale approach to Gaussian process based sequential design of experiments

Gaussian process (GP) models have become a well-established frameworkfor...
research
08/26/2020

Fast Bayesian Force Fields from Active Learning: Study of Inter-Dimensional Transformation of Stanene

We present a way to dramatically accelerate Gaussian process models for ...
research
01/10/2021

Improved active output selection strategy for noisy environments

The test bench time needed for model-based calibration can be reduced wi...

Please sign up or login with your details

Forgot password? Click here to reset