English

A Survey of Constrained Gaussian Process Regression: Approaches and Implementation Challenges

Machine Learning 2021-01-07 v3 Statistics Theory Machine Learning Statistics Theory

Abstract

Gaussian process regression is a popular Bayesian framework for surrogate modeling of expensive data sources. As part of a broader effort in scientific machine learning, many recent works have incorporated physical constraints or other a priori information within Gaussian process regression to supplement limited data and regularize the behavior of the model. We provide an overview and survey of several classes of Gaussian process constraints, including positivity or bound constraints, monotonicity and convexity constraints, differential equation constraints provided by linear PDEs, and boundary condition constraints. We compare the strategies behind each approach as well as the differences in implementation, concluding with a discussion of the computational challenges introduced by constraints.

Keywords

Cite

@article{arxiv.2006.09319,
  title  = {A Survey of Constrained Gaussian Process Regression: Approaches and Implementation Challenges},
  author = {Laura Swiler and Mamikon Gulian and Ari Frankel and Cosmin Safta and John Jakeman},
  journal= {arXiv preprint arXiv:2006.09319},
  year   = {2021}
}

Comments

42 pages, 3 figures. Version 3: DOI & Reference added; appeared in Journal of Machine Learning for Modeling and Computing. Version 2 includes minor additions, clarifications and improvements to notation