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Images of Gaussian and other stochastic processes under closed, densely-defined, unbounded linear operators

Abstract

Gaussian processes (GPs) are widely-used tools in spatial statistics and machine learning and the formulae for the mean function and covariance kernel of a GP TuT u that is the image of another GP uu under a linear transformation TT acting on the sample paths of uu are well known, almost to the point of being folklore. However, these formulae are often used without rigorous attention to technical details, particularly when TT is an unbounded operator such as a differential operator, which is common in many modern applications. This note provides a self-contained proof of the claimed formulae for the case of a closed, densely-defined operator TT acting on the sample paths of a square-integrable (not necessarily Gaussian) stochastic process. Our proof technique relies upon Hille's theorem for the Bochner integral of a Banach-valued random variable.

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