Functional Gaussian Fields on Hyperspheres with their Equivalent Gaussian Measures
Alessia Caponera, Vinicius Ferreira, Emilio Porcu

TL;DR
This paper develops a spectral framework for isotropic Gaussian fields on high-dimensional spheres with values in Hilbert spaces, extending classical measure equivalence results to infinite dimensions and providing tools for functional data analysis on spherical domains.
Contribution
It introduces an operator-valued extension of Schoenberg's theorem and a functional Feldman-H'ajek criterion, enabling analysis of measure equivalence for Hilbert-valued spherical Gaussian fields.
Findings
Spectral decomposition of covariance operators using trace-class Schoenberg operators.
Explicit measure equivalence conditions involving Hilbert summability of Schoenberg sequences.
Illustrative models demonstrating the impact of operator-valued spectra on measure-theoretic properties.
Abstract
We develop a general framework for isotropic functional Gaussian fields on the -dimensional sphere , where the field takes values in a separable Hilbert space . We establish an operator-valued extension of Schoenberg's theorem and show that the covariance structure of such fields admits a representation through a sequence of trace-class -Schoenberg operators, yielding an explicit spectral decomposition of the covariance operator on . We derive a functional version of the Feldman-H'ajek criterion and prove that equivalence of the Gaussian measures induced by two Hilbert-valued spherical fields is determined by a Hilbert summability condition involving Schoenberg functional sequences, extending classical results for scalar and vector fields to the infinite-dimensional setting. We further show how equivalence of all…
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Taxonomy
TopicsMorphological variations and asymmetry · Topological and Geometric Data Analysis · Numerical methods in inverse problems
