Leveraging the nugget parameter for efficient Gaussian process modeling

Abstract

Gaussian process (GP) metamodels have been widely used as surrogates for computer simulations or physical experiments. The heart of GP modeling lies in optimizing the log‐likelihood function with respect to the hyperparameters to fit the model to a set of observations. The complexity of the log‐likelihood function, computational expense, and numerical instabilities challenge this process. These issues limit the applicability of GP models more when the size of the training data set and/or problem dimensionality increase. To address these issues, we develop a novel approach for fitting GP models that significantly improves computational expense and prediction accuracy. Our approach leverages the smoothing effect of the nugget parameter on the log‐likelihood profile to track the evolution of the optimal hyperparameter estimates as the nugget parameter is adaptively varied. The new approach is implemented in the R package GPM and compared to a popular GP modeling R package (GPfit) for a set of benchmark problems. The effectiveness of the approach is also demonstrated using an engineering problem to learn the constitutive law of a hyperelastic composite where the required level of accuracy in estimating the response gradient necessitates a large training data set.

Document Details

Document Type
Pub Defense Publication
Publication Date
Feb 06, 2018
Source ID
10.1002/nme.5751

Entities

People

  • Daniel W. Apley
  • Ramin Bostanabad
  • Siyu Tao
  • Tucker Kearney
  • Wei Chen

Organizations

  • Air Force Office of Scientific Research
  • National Science Foundation
  • Northwestern University

Tags

Fields of Study

  • Computer science

Readers

  • Computational Modeling and Simulation
  • Infectious Disease/Epidemiology
  • Neural Network Machine Learning.

Technology Areas

  • Space