Tensor Approximation of Advanced Metrics for Sensitivity Analysis

12/05/2017
by   Rafael Ballester-Ripoll, et al.
0

Following up on the success of the analysis of variance (ANOVA) decomposition and the Sobol indices (SI) for global sensitivity analysis, various related quantities of interest have been defined in the literature including the effective and mean dimensions, the dimension distribution, and the Shapley values. Such metrics combine up to exponential numbers of SI in different ways and can be of great aid in uncertainty quantification and model interpretation tasks, but are computationally challenging. We focus on surrogate based sensitivity analysis for independently distributed variables, namely via the tensor train (TT) decomposition. This format permits flexible and scalable surrogate modeling and can efficiently extract all SI at once in a compressed TT representation of their own. Based on this, we contribute a range of novel algorithms that compute more advanced sensitivity metrics by selecting and aggregating certain subsets of SI in the tensor compressed domain. Drawing on an interpretation of the TT model in terms of deterministic finite automata, we are able to construct explicit auxiliary TT tensors that encode exactly all necessary index selection masks. Having both the SI and the masks in the TT format allows efficient computation of all aforementioned metrics, as we demonstrate in a number of example models.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
12/01/2017

Sobol Tensor Trains for Global Sensitivity Analysis

Sobol indices are a widespread quantitative measure for variance-based g...
research
08/05/2022

Black box approximation in the tensor train format initialized by ANOVA decomposition

Surrogate models can reduce computational costs for multivariable functi...
research
10/26/2021

Rademacher Random Projections with Tensor Networks

Random projection (RP) have recently emerged as popular techniques in th...
research
01/17/2019

Application of Stochastic and Deterministic Techniques for Uncertainty Quantification and Sensitivity Analysis of Energy Systems

Sensitivity analysis (SA) and uncertainty quantification (UQ) are used t...
research
11/24/2020

Uncertainty Quantification by Random Measures and Fields

We present a general framework for uncertainty quantification that is a ...
research
09/29/2022

Optimization of Functions Given in the Tensor Train Format

Tensor train (TT) format is a common approach for computationally effici...
research
12/03/2017

ALLSAT compressed with wildcards. Part 4: An invitation for C-programmers

The model set of a general Boolean function in CNF is calculated in a co...

Please sign up or login with your details

Forgot password? Click here to reset