LVGP - Latent Variable Gaussian Process Modeling with Qualitative and
Quantitative Input Variables
Fit response surfaces for datasets with latent-variable
Gaussian process modeling, predict responses for new inputs,
and plot latent variables locations in the latent space (only
1D or 2D). The input variables of the datasets can be
quantitative, qualitative/categorical or mixed. The output
variable of the datasets is a scalar (quantitative). The
optimization of the likelihood function is done using a
successive approximation/relaxation algorithm similar to
another GP modeling package "GPM". The modeling method is
published in "A Latent Variable Approach to Gaussian Process
Modeling with Qualitative and Quantitative Factors" by Yichi
Zhang, Siyu Tao, Wei Chen, and Daniel W. Apley (2018)
<arXiv:1806.07504>. The package is developed in IDEAL of
Northwestern University.