AI RESEARCH
Predicting Covariate-Driven Spatial Deformation for Nonstationary Gaussian Processes
arXiv CS.LG
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ArXi:2604.27280v1 Announce Type: new Nonstationary Gaussian processes (GPs) are essential for modeling complex, locally heterogeneous spatial data. A common modeling approach is the spatial deformation method that warps the domain to recover isotropy. However, this static method does not account for changes in spatial correlation induced by covariates, limiting its ability to predict nonstationary GPs under new covariate conditions. To enable predictive modeling of the deformation method, we propose to model the spatial deformation as a function of covariates.