Posterior consistency and convergence rates for Bayesian inversion with hypoelliptic operators

Journal Article (2016)
Author(s)

Hanne Kekkonen (Viikki Biocenter 1)

Matti Lassas (Viikki Biocenter 1)

Samuli Siltanen (Viikki Biocenter 1)

Affiliation
External organisation
DOI related publication
https://doi.org/10.1088/0266-5611/32/8/085005
More Info
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Publication Year
2016
Language
English
Affiliation
External organisation
Issue number
8
Volume number
32

Abstract

The Bayesian approach to inverse problems is studied in the case where the forward map is a linear hypoelliptic pseudodifferential operator and measurement error is additive white Gaussian noise. The measurement model for an unknown Gaussian random variable U (x, w) is Mδ (y, w) = A (U (x, w)) + δ>(y, w), where A is a finitely many orders smoothing linear hypoelliptic operator and δ> 0 is the noise magnitude. The covariance operator CU of U is smoothing of order 2r, self-adjoint, injective and elliptic pseudodifferential operator. If ϵ was taking values in L2 then in Gaussian case solving the conditional mean (and maximum a posteriori) estimate is linked to solving the minimisation problem Tδ (mδ) = arg min μϵHr{ Au-mδ;2L 2+δ2CU -1/2u2L 2} However, Gaussian white noise does not take values in L2but in H-s where s>0 is big enough. A modification of the above approach to solve the inverse problem is presented, covering the case of white Gaussian measurement noise. Furthermore, the convergence of the conditional mean estimate to the correct solution as δ → 0 is proven in appropriate function spaces using microlocal analysis. Also the frequentist posterior contractions rates are studied.

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