Time-adaptive functional Gaussian Process regression

arXiv stat.ML / 3/24/2026

📰 NewsSignals & Early TrendsIdeas & Deep AnalysisModels & Research

Key Points

  • The paper introduces a new formulation of functional Gaussian Process regression on manifolds for spatiotemporal random-field settings, using an Empirical Bayes approach.
  • It leverages tight Gaussian measures in separable Hilbert spaces and exploits covariance-kernel invariance under the manifold’s isometry group.
  • The work connects these measures to infinite-product Gaussian measures through eigenfunctions of the Laplace–Beltrami operator, enabling a principled construction in manifold domains.
  • It proposes time-adaptive angular spectra as a core dimension-reduction mechanism, with an implementation truncation scheme tied to the available functional sample size.
  • The authors validate the predictor’s finite-sample and asymptotic behavior via simulation studies and a synthetic-data application.

Abstract

This paper proposes a new formulation of functional Gaussian Process regression in manifolds, based on an Empirical Bayes approach, in the spatiotemporal random field context. We apply the machinery of tight Gaussian measures in separable Hilbert spaces, exploiting the invariance property of covariance kernels under the group of isometries of the manifold. The identification of these measures with infinite-product Gaussian measures is then obtained via the eigenfunctions of the Laplace-Beltrami operator on the manifold. The involved time-varying angular spectra constitute the key tool for dimension reduction in the implementation of this regression approach, adopting a suitable truncation scheme depending on the functional sample size. The simulation study and synthetic data application undertaken illustrate the finite sample and asymptotic properties of the proposed functional regression predictor.