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Consistency of variational Bayesian inference for non-linear inverse problems of partial differential equations

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Bibliography:3 Pages
Abstract

We consider non-linear Bayesian inverse problems of determining the parameter ff. For the posterior distribution with a class of Gaussian process priors, we study the statistical performance of variational Bayesian inference to the posterior with variational sets consisting of Gaussian measures or a mean-field family. We propose certain conditions on the forward map G\mathcal{G}, the variational set Q\mathcal{Q} and the prior such that, as the number NN of measurements increases, the resulting variational posterior distributions contract to the ground truth f0f_0 generating the data, and derive a convergence rate with polynomial order or logarithmic order. As specific examples, we consider a collection of non-linear inverse problems, including the Darcy flow problem, the inverse potential problem for a subdiffusion equation, and the inverse medium scattering problem. Besides, we show that our convergence rates are minimax optimal for these inverse problems.

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