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research article

Certified And Fast Computations With Shallow Covariance Kernels

Kressner, Daniel  
•
Latz, Jonas
•
Massei, Stefano  
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December 1, 2020
Foundations Of Data Science

Many techniques for data science and uncertainty quantification demand efficient tools to handle Gaussian random fields, which are defined in terms of their mean functions and covariance operators. Recently, parameterized Gaussian random fields have gained increased attention, due to their higher degree of flexibility. However, especially if the random field is parameterized through its covariance operator, classical random field discretization techniques fail or become inefficient. In this work we introduce and analyze a new and certified algorithm for the low-rank approximation of a parameterized family of covariance operators which represents an extension of the adaptive cross approximation method for symmetric positive definite matrices. The algorithm relies on an affine linear expansion of the covariance operator with respect to the parameters, which needs to be computed in a preprocessing step using, e.g., the empirical interpolation method. We discuss and test our new approach for isotropic covariance kernels, such as Matern kernels. The numerical results demonstrate the advantages of our approach in terms of computational time and confirm that the proposed algorithm provides the basis of a fast sampling procedure for parameter dependent Gaussian random fields.

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Type
research article
DOI
10.3934/fods.2020022
Web of Science ID

WOS:000663367400005

Author(s)
Kressner, Daniel  
Latz, Jonas
Massei, Stefano  
Ullmann, Elisabeth
Date Issued

2020-12-01

Publisher

AMER INST MATHEMATICAL SCIENCES-AIMS

Published in
Foundations Of Data Science
Volume

2

Issue

4

Start page

487

End page

512

Subjects

Mathematics, Applied

•

Statistics & Probability

•

Mathematics

•

adaptive cross approximation

•

covariance matrix

•

greedy algorithm

•

wasserstein distance

•

gaussian random field

•

empirical interpolation

•

hierarchical matrices

•

gaussian-processes

•

random-fields

•

approximation

•

algorithms

Editorial or Peer reviewed

REVIEWED

Written at

EPFL

EPFL units
ANCHP  
Available on Infoscience
July 17, 2021
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/180058
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