STATISTICAL GUARANTEES FOR BAYESIAN UNCERTAINTY QUANTIFICATION IN NONLINEAR INVERSE PROBLEMS WITH GAUSSIAN PROCESS PRIORS
成果类型:
Article
署名作者:
Monard, Francois; Nickl, Richard; Paternain, Gabriel P.
署名单位:
University of California System; University of California Santa Cruz; University of Cambridge
刊物名称:
ANNALS OF STATISTICS
ISSN/ISSBN:
0090-5364
DOI:
10.1214/21-AOS2082
发表日期:
2021
页码:
3255-3298
关键词:
von mises theorems
ray transform
rates
mcmc
contraction
regression
inference
摘要:
Bayesian inference and uncertainty quantification in a general class of nonlinear inverse regression models is considered. Analytic conditions on the regression model {g(theta) : theta is an element of Theta} and on Gaussian process priors for theta are provided such that semiparametrically efficient inference is possible for a large class of linear functionals of theta. A general Bernstein-von Mises theorem is proved that shows that the (non-Gaussian) posterior distributions are approximated by certain Gaussian measures centred at the posterior mean. As a consequence, posterior-based credible sets are valid and optimal from a frequentist point of view. The theory is illustrated with two applications with PDEs that arise in nonlinear tomography problems: an elliptic inverse problem for a Schrodinger equation, and inversion of non-Abelian X-ray transforms. New analytical techniques are deployed to show that the relevant Fisher information operators are invertible between suitable function spaces.