liGP: Locally Induced Gaussian Process Regression
Performs locally induced approximate GP regression for large computer experiments and spatial datasets following Cole D.A., Christianson, R., Gramacy, R.B. (2021) Statistics and Computing, 31(3), 1-21, <arXiv:2008.12857>. The approximation is based on small local designs combined with a set of inducing points (latent design points) for predictions at particular inputs. Parallelization is supported for generating predictions over an immense out-of-sample testing set. Local optimization of the inducing points design is provided based on variance-based criteria. Inducing point template schemes, including scaling of space-filling designs, are also provided.
Version: |
1.0.1 |
Depends: |
R (≥ 3.4) |
Imports: |
hetGP, laGP, doParallel, foreach |
Suggests: |
lhs |
Published: |
2021-07-17 |
Author: |
D. Austin Cole [aut, cre],
Ryan B Christianson [cph],
Robert B. Gramacy [cph] |
Maintainer: |
D. Austin Cole <austin.cole8 at vt.edu> |
License: |
LGPL-2 | LGPL-2.1 | LGPL-3 [expanded from: LGPL] |
NeedsCompilation: |
yes |
Materials: |
NEWS |
CRAN checks: |
liGP results |
Documentation:
Downloads:
Linking:
Please use the canonical form
https://CRAN.R-project.org/package=liGP
to link to this page.