Time-adaptive functional Gaussian Process regression
arXiv stat.ML / 3/24/2026
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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.
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