gptoolsStan - Gaussian Processes on Graphs and Lattices in 'Stan'
Gaussian processes are flexible distributions to model
functional data. Whilst theoretically appealing, they are
computationally cumbersome except for small datasets. This
package implements two methods for scaling Gaussian process
inference in 'Stan'. First, a sparse approximation of the
likelihood that is generally applicable and, second, an exact
method for regularly spaced data modeled by stationary kernels
using fast Fourier methods. Utility functions are provided to
compile and fit 'Stan' models using the 'cmdstanr' interface.
References: Hoffmann and Onnela (2022)
<doi:10.48550/arXiv.2301.08836>.