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Bernstein - von Mises theorems for statistical inverse problems I: Schrödinger equation

6 July 2017
Richard Nickl
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Abstract

The inverse problem of determining the unknown potential f>0f>0f>0 in the partial differential equation \frac{\Delta}{2} u - fu =0 \text{ on } \mathcal O ~~\text{s.t. } u = g \text { on } \partial \mathcal O, where O\mathcal OO is a bounded C∞C^\inftyC∞-domain in Rd\mathbb R^dRd and g>0g>0g>0 is a given function prescribing boundary values, is considered. The data consist of the solution uuu corrupted by additive Gaussian noise. A nonparametric Bayesian prior for the function fff is devised and a Bernstein - von Mises theorem is proved which entails that the posterior distribution given the observations is approximated in a suitable function space by an infinite-dimensional Gaussian measure that has a `minimal' covariance structure in an information-theoretic sense. As a consequence the posterior distribution performs valid and optimal frequentist statistical inference on fff in the small noise limit.

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