Crandore Hub

BayesGP

Efficient Implementation of Gaussian Process in Bayesian Hierarchical Models

Implements Bayesian hierarchical models with flexible Gaussian process priors, focusing on Extended Latent Gaussian Models and incorporating various Gaussian process priors for Bayesian smoothing. Computations leverage finite element approximations and adaptive quadrature for efficient inference. Methods are detailed in Zhang, Stringer, Brown, and Stafford (2023) <doi:10.1177/09622802221134172>; Zhang, Stringer, Brown, and Stafford (2024) <doi:10.1080/10618600.2023.2289532>; Zhang, Brown, and Stafford (2023) <doi:10.48550/arXiv.2305.09914>; and Stringer, Brown, and Stafford (2021) <doi:10.1111/biom.13329>.

Versions across snapshots

VersionRepositoryFileSize
0.1.3 rolling linux/jammy R-4.5 BayesGP_0.1.3.tar.gz 1.1 MiB
0.1.3 rolling linux/noble R-4.5 BayesGP_0.1.3.tar.gz 1.1 MiB
0.1.3 rolling source/ R- BayesGP_0.1.3.tar.gz 687.2 KiB
0.1.3 latest linux/noble R-4.5 BayesGP_0.1.3.tar.gz 1.1 MiB
0.1.3 latest source/ R- BayesGP_0.1.3.tar.gz 687.2 KiB
0.1.3 latest linux/jammy R-4.5 BayesGP_0.1.3.tar.gz 1.1 MiB
0.1.3 2026-04-26 source/ R- BayesGP_0.1.3.tar.gz 687.2 KiB
0.1.3 2026-04-23 source/ R- BayesGP_0.1.3.tar.gz 687.2 KiB
0.1.3 2026-04-09 windows/windows R-4.5 BayesGP_0.1.3.zip 1.4 MiB
0.1.3 2025-04-20 source/ R- BayesGP_0.1.3.tar.gz 687.2 KiB

Dependencies (latest)

Imports

LinkingTo

Suggests