TAG (0.2.0)

0 users

Transformed Additive Gaussian Processes.


Implement the transformed additive Gaussian (TAG) process and the transformed approximately additive Gaussian (TAAG) process proposed in Lin and Joseph (2019+) . These functions can be used to model deterministic computer experiments, obtain predictions at new inputs, and quantify the uncertainty of the predictions.

Maintainer: Li-Hsiang Lin
Author(s): Li-Hsiang Lin and V. Roshan Joseph

License: GPL-2

Uses: DiceKriging, doParallel, FastGP, Matrix, mgcv, mlegp, randtoolbox, Rcpp

Released about 1 month ago.

1 previous version



  (0 votes)


  (0 votes)

Log in to vote.


No one has written a review of TAG yet. Want to be the first? Write one now.

Related packages:(20 best matches, based on common tags.)

Search for TAG on google, google scholar, r-help, r-devel.

Visit TAG on R Graphical Manual.