Minimax Error of Interpolation and Optimal Design of Experiments for Variable Fidelity Data

10/21/2016
by   Alexey Zaytsev, et al.
0

Engineering problems often involve data sources of variable fidelity with different costs of obtaining an observation. In particular, one can use both a cheap low fidelity function (e.g. a computational experiment with a CFD code) and an expensive high fidelity function (e.g. a wind tunnel experiment) to generate a data sample in order to construct a regression model of a high fidelity function. The key question in this setting is how the sizes of the high and low fidelity data samples should be selected in order to stay within a given computational budget and maximize accuracy of the regression model prior to committing resources on data acquisition. In this paper we obtain minimax interpolation errors for single and variable fidelity scenarios for a multivariate Gaussian process regression. Evaluation of the minimax errors allows us to identify cases when the variable fidelity data provides better interpolation accuracy than the exclusively high fidelity data for the same computational budget. These results allow us to calculate the optimal shares of variable fidelity data samples under the given computational budget constraint. Real and synthetic data experiments suggest that using the obtained optimal shares often outperforms natural heuristics in terms of the regression accuracy.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
07/12/2017

Large Scale Variable Fidelity Surrogate Modeling

Engineers widely use Gaussian process regression framework to construct ...
research
03/23/2021

Gradient-enhanced multifidelity neural networks for high-dimensional function approximation

In this work, a novel multifidelity machine learning (ML) model, the gra...
research
06/10/2022

Multifidelity Reinforcement Learning with Control Variates

In many computational science and engineering applications, the output o...
research
03/29/2023

A few-shot graph Laplacian-based approach for improving the accuracy of low-fidelity data

Low-fidelity data is typically inexpensive to generate but inaccurate. O...
research
02/26/2021

Multi-fidelity regression using artificial neural networks: efficient approximation of parameter-dependent output quantities

Highly accurate numerical or physical experiments are often time-consumi...
research
03/04/2021

Finding Efficient Trade-offs in Multi-Fidelity Response Surface Modeling

In the context of optimization approaches to engineering applications, t...
research
09/13/2022

Quadrature Sampling of Parametric Models with Bi-fidelity Boosting

Least squares regression is a ubiquitous tool for building emulators (a....

Please sign up or login with your details

Forgot password? Click here to reset