doi:10.18637/jss.v072.i01>.">

laGP: Local Approximate Gaussian Process Regression (original) (raw)

Performs approximate GP regression for large computer experiments and spatial datasets. The approximation is based on finding small local designs for prediction (independently) at particular inputs. OpenMP and SNOW parallelization are supported for prediction over a vast out-of-sample testing set; GPU acceleration is also supported for an important subroutine. OpenMP and GPU features may require special compilation. An interface to lower-level (full) GP inference and prediction is provided. Wrapper routines for blackbox optimization under mixed equality and inequality constraints via an augmented Lagrangian scheme, and for large scale computer model calibration, are also provided. For details and tutorial, see Gramacy (2016 <doi:10.18637/jss.v072.i01>.

Version: 1.5-9
Depends: R (≥ 2.14)
Imports: tgp, parallel
Suggests: mvtnorm, MASS, interp, lhs, crs, DiceOptim
Published: 2023-03-14
DOI: 10.32614/CRAN.package.laGP
Author: Robert B. Gramacy, Furong Sun
Maintainer: Robert B. Gramacy
License: LGPL-2 | LGPL-2.1 LGPL-3 [expanded from: LGPL]
URL: https://bobby.gramacy.com/r_packages/laGP/
NeedsCompilation: yes
Citation: laGP citation info
Materials: , ,
CRAN checks: laGP results

Documentation:

Downloads:

Reverse dependencies:

Linking:

Please use the canonical formhttps://CRAN.R-project.org/package=laGPto link to this page.