Florens, Jean-Pierre and Simoni, Anna (2010) Regularizing priors for linear inverse problems. TSE Working Paper, n. 10-175
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Abstract
We consider statistical linear inverse problems in Hilbert spaces of the type ˆ Y = Kx + U where we want to estimate the function x from indirect noisy functional observations ˆY . In several applications the operator K has an inverse that is not continuous on the whole space of reference; this phenomenon is known as ill-posedness of the inverse problem. We use a Bayesian approach and a conjugate-Gaussian model. For a very general specification of the probability model the posterior distribution of x is known to be inconsistent in a frequentist sense. Our first contribution consists in constructing a class of Gaussian prior distributions on x that are shrinking with the measurement error U and we show that, under mild conditions, the corresponding posterior distribution is consistent in a frequentist sense and converges at the optimal rate of contraction. Then, a class ^ of posterior mean estimators for x is given. We propose an empirical Bayes procedure for selecting an estimator in this class that mimics the posterior mean that has the smallest risk on the true x.
Item Type: | Monograph (Working Paper) |
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Language: | English |
Date: | May 2010 |
Subjects: | B- ECONOMIE ET FINANCE |
Divisions: | TSE-R (Toulouse) |
Site: | UT1 |
Date Deposited: | 18 Jan 2012 06:02 |
Last Modified: | 02 Apr 2021 15:36 |
OAI Identifier: | oai:tse-fr.eu:22884 |
URI: | https://publications.ut-capitole.fr/id/eprint/3394 |