Jan. 1, 2022, midnight | Jian Cao, Joseph Guinness, Marc G. Genton, Matthias Katzfuss

JMLR www.jmlr.org

Gaussian process (GP) regression is a flexible, nonparametric approach to regression that naturally quantifies uncertainty. In many applications, the number of responses and covariates are both large, and a goal is to select covariates that are related to the response. For this setting, we propose a novel, scalable algorithm, coined VGPR, which optimizes a penalized GP log-likelihood based on the Vecchia GP approximation, an ordered conditional approximation from spatial statistics that implies a sparse Cholesky factor of the precision matrix. …

gaussian-process process regression scalable

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