English

Modeling Large Nonstationary Spatial Data with the Full-Scale Basis Graphical Lasso

Methodology 2025-10-08 v2

Abstract

We propose a new approach for the modeling large datasets of nonstationary spatial processes that combines a latent low rank process and a sparse covariance model. The low rank component coefficients are endowed with a flexible graphical Gaussian Markov random field model. The utilization of a low rank and compactly-supported covariance structure combines the full-scale approximation and the basis graphical lasso; we term this new approach the full-scale basis graphical lasso (FSBGL). Estimation employs a graphical lasso-penalized likelihood, which is optimized using a difference-of-convex scheme. We illustrate the proposed approach on synthetic fields as well as with a challenging high-resolution simulation dataset of the thermosphere. In a comparison against state-of-the-art spatial models, the FSBGL performs better at capturing salient features of the thermospheric temperature fields, even with limited available training data.

Keywords

Cite

@article{arxiv.2505.01318,
  title  = {Modeling Large Nonstationary Spatial Data with the Full-Scale Basis Graphical Lasso},
  author = {Matthew LeDuc and William Kleiber and Tomoko Matsuo},
  journal= {arXiv preprint arXiv:2505.01318},
  year   = {2025}
}
R2 v1 2026-06-28T23:19:19.632Z