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Gaussian Measures Conditioned on Nonlinear Observations: Consistency, MAP Estimators, and Simulation

Abstract

The article presents a systematic study of the problem of conditioning a Gaussian random variable ξ\xi on nonlinear observations of the form Fϕ(ξ)F \circ \phi(\xi) where ϕ:XRN\phi: \mathcal{X} \to \mathbb{R}^N is a bounded linear operator and FF is nonlinear. Such problems arise in the context of Bayesian inference and recent machine learning-inspired PDE solvers. We give a representer theorem for the conditioned random variable ξFϕ(ξ)\xi \mid F\circ \phi(\xi), stating that it decomposes as the sum of an infinite-dimensional Gaussian (which is identified analytically) as well as a finite-dimensional non-Gaussian measure. We also introduce a novel notion of the mode of a conditional measure by taking the limit of the natural relaxation of the problem, to which we can apply the existing notion of maximum a posteriori estimators of posterior measures. Finally, we introduce a variant of the Laplace approximation for the efficient simulation of the aforementioned conditioned Gaussian random variables towards uncertainty quantification.

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