When using the package, please acknowledge:
Ming D, Guillas S (2021). “Linked Gaussian process emulation for systems of computer models using Matérn kernels and adaptive design.” SIAM/ASA Journal on Uncertainty Quantification, 9(4), 1615–1642.
Ming D, Williamson D, Guillas S (2023). “Deep Gaussian process emulation using stochastic imputation.” Technometrics, 65(2), 150–161.
Ming D, Williamson D (2023). “Linked deep Gaussian process emulation for model networks.” arXiv:2306.01212.
Ming D, Williamson D (2024). dgpsi: An R package powered by Python for modelling linked deep Gaussian processes. R package version 2.4.0, https://CRAN.R-project.org/package=dgpsi.
Corresponding BibTeX entries:
@Article{, title = {Linked Gaussian process emulation for systems of computer models using Matérn kernels and adaptive design}, author = {Deyu Ming and Serge Guillas}, journal = {SIAM/ASA Journal on Uncertainty Quantification}, year = {2021}, volume = {9}, number = {4}, pages = {1615--1642}, }
@Article{, title = {Deep Gaussian process emulation using stochastic imputation}, author = {Deyu Ming and Daniel Williamson and Serge Guillas}, journal = {Technometrics}, year = {2023}, volume = {65}, number = {2}, pages = {150--161}, }
@Unpublished{, title = {Linked deep Gaussian process emulation for model networks}, author = {Deyu Ming and Daniel Williamson}, note = {arXiv:2306.01212}, year = {2023}, }
@Manual{, title = {dgpsi: An R package powered by Python for modelling linked deep Gaussian processes}, author = {Deyu Ming and Daniel Williamson}, note = {R package version 2.4.0}, url = {https://CRAN.R-project.org/package=dgpsi}, year = {2024}, }