Maintainer: Annie S. Booth (annie_booth@ncsu.edu)
Performs Bayesian posterior inference for deep Gaussian processes following Sauer, Gramacy, and Higdon (2023). See Sauer (2023) for comprehensive methodological details and https://bitbucket.org/gramacylab/deepgp-ex/ for a variety of coding examples. Models are trained through MCMC including elliptical slice sampling of latent Gaussian layers and Metropolis-Hastings sampling of kernel hyperparameters. Vecchia-approximation for faster computation is implemented following Sauer, Cooper, and Gramacy (2023). Optional monotonic warpings are implemented following Barnett et al. (2024). Downstream tasks include sequential design through active learning Cohn/integrated mean squared error (ALC/IMSE; Sauer, Gramacy, and Higdon, 2023), optimization through expected improvement (EI; Gramacy, Sauer, and Wycoff, 2022), and contour location through entropy (Booth, Renganathan, and Gramacy, 2024). Models extend up to three layers deep; a one layer model is equivalent to typical Gaussian process regression. Incorporates OpenMP and SNOW parallelization and utilizes C/C++ under the hood.
Run help("deepgp-package") or
help(package = "deepgp") for more information.
Sauer, A. (2023). Deep Gaussian process surrogates for computer experiments. Ph.D. Dissertation, Department of Statistics, Virginia Polytechnic Institute and State University. http://hdl.handle.net/10919/114845
Sauer, A., Gramacy, R.B., & Higdon, D. (2023). Active learning for deep Gaussian process surrogates. Technometrics, 65, 4-18. arXiv:2012.08015
Sauer, A., Cooper, A., & Gramacy, R. B. (2023). Vecchia-approximated deep Gaussian processes for computer experiments. Journal of Computational and Graphical Statistics, 1-14. arXiv:2204.02904
Gramacy, R. B., Sauer, A. & Wycoff, N. (2022). Triangulation candidates for Bayesian optimization. Advances in Neural Information Processing Systems (NeurIPS), 35, 35933-35945. arXiv:2112.07457
Booth, A. S., Renganathan, S. A. & Gramacy, R. B. (2024). Contour location for reliability in airfoil simulation experiments using deep Gaussian processes. In Review. arXiv:2308.04420
Barnett, S., Beesley, L. J., Booth, A. S., Gramacy, R. B., & Osthus D. (2024). Monotonic warpings for additive and deep Gaussian processes. In Review. arXiv:2408.01540
What’s new in version 1.1.3?
monowarp = TRUE to fit_two_layer.
Monotonic warpings trigger separable lengthscales on the outer
layer.true_g = NULL)fit_one_layerWhat’s new in version 1.1.2?
ordering argument in fit
functions)lite = TRUE predictions have been sped up
cov(t(mu_t)) computation altogether (this
is only necessary for lite = FALSE)d_new calculationsdiag_quad_mat Cpp function more oftenclean_prediction function as it was no
longer neededfit_one_layer with
vecchia = TRUE and sep = TRUE caused by the
arma::mat covmat initialization in the
vecchia.cpp filepredict.dgp2 with
return_all = TRUE (replaced out with
object - thanks Steven Barnett!)ll in continue functions
(thanks Sebastien Coube!)What’s new in version 1.1.1?
entropy_limit in
any of the predict functions.return_all = TRUE.predict functions no
longer return s2_smooth or Sigma_smooth. If
desired, these quantities may be calculated by subtracting
tau2 * g from the diagonal.vecchia = TRUE option may now utilize either the
Matern (cov = "matern") or squared exponential kernel
(cov = "exp2"“).cores = 1 in
predict, ALC, and IMSE functions
(helps to avoid a SNOW conflict when running multiple instances on the
same machine).fit_two_layer, the intermediate latent layer may now
have either a prior mean of zero (default) or a prior mean equal to
x (pmx = TRUE). If pmx is set to
a constant, this will be the scale parameter on the inner Gaussian
layer.What’s new in version 1.1.0?
sep = TRUE in
fit_one_layer to fit a GP with separable/anisotropic
lengthscales.What’s new in version 1.0.1?
What’s new in version 1.0.0?
vecchia = TRUE in fit functions) for
faster computation. The speed of this implementation relies on OpenMP
parallelization (make sure the -fopenmp flag is present
with package installation).tau2 is now calculated at the time of MCMC, not at the
time of prediction. This avoids some extra calculations.What’s new in version 0.3.0?
v = 0.5,
v = 1.5, or v = 2.5 (default). The squared
exponential kernel is still required for use with ALC and IMSE (set
cov = "exp2" in fit functions).EI = TRUE inside predict
calls. EI calculations are nugget-free and are for minimizing
the response (negate y if maximization is desired).store_latent = TRUE inside predict.