Regularized Posteriors in Linear Ill-Posed Inverse Problems

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Abstract

We study the Bayesian solution of a linear inverse problem in a separable Hilbert space setting with Gaussian prior and noise distribution. Our contribution is to propose a new Bayes estimator which is a linear and continuous estimator on the whole space and is stronger than the mean of the exact Gaussian posterior distribution which is only defined as a measurable linear transformation. Our estimator is the mean of a slightly modified posterior distribution called regularized posterior distribution. Frequentist consistency of our estimator and of the regularized posterior distribution is proved. A Monte Carlo study and an application to real data confirm good small-sample properties of our procedure.

Original languageEnglish
Pages (from-to)214-235
Number of pages22
JournalScandinavian Journal of Statistics
Volume39
Issue number2
DOIs
Publication statusPublished - 1 Jun 2012
Externally publishedYes

Keywords

  • Functional data
  • Gaussian process priors
  • Inverse problems
  • Measurable linear transformation
  • Posterior consistency
  • Tikhonov regularization

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