English

Discretization-invariant Bayesian inversion and Besov space priors

Probability 2009-01-28 v1 Methodology

Abstract

Bayesian solution of an inverse problem for indirect measurement M=AU+EM = AU + {\mathcal{E}} is considered, where UU is a function on a domain of RdR^d. Here AA is a smoothing linear operator and E {\mathcal{E}} is Gaussian white noise. The data is a realization mkm_k of the random variable Mk=PkAU+PkEM_k = P_kA U+P_k {\mathcal{E}}, where PkP_k is a linear, finite dimensional operator related to measurement device. To allow computerized inversion, the unknown is discretized as Un=TnUU_n=T_nU, where TnT_n is a finite dimensional projection, leading to the computational measurement model Mkn=PkAUn+PkEM_{kn}=P_k A U_n + P_k {\mathcal{E}}. Bayes formula gives then the posterior distribution πkn(unmkn)πn(un)exp(1/2mknPkAun22)\pi_{kn}(u_n | m_{kn})\sim\pi_n(u_n) \exp(-{1/2}\|m_{kn} - P_kA u_n\|_2^2) in RdR^d, and the mean UknCM:=unπkn(unmk)dunU^{CM}_{kn}:=\int u_n \pi_{kn}(u_n | m_k) du_n is considered as the reconstruction of UU. We discuss a systematic way of choosing prior distributions \priorn\prior_n for all nn0>0n\geq n_0>0 by achieving them as projections of a distribution in a infinite-dimensional limit case. Such choice of prior distributions is {\em discretization-invariant} in the sense that \priorn\prior_n represent the same {\em a priori} information for all nn and that the mean UknCMU^{CM}_{kn} converges to a limit estimate as k,nk,n\to\infty. Gaussian smoothness priors and wavelet-based Besov space priors are shown to be discretization invariant. In particular, Bayesian inversion in dimension two with B111B^1_{11} prior is related to penalizing the 1\ell^1 norm of the wavelet coefficients of UU.

Keywords

Cite

@article{arxiv.0901.4220,
  title  = {Discretization-invariant Bayesian inversion and Besov space priors},
  author = {Matti Lassas. Eero Saksman and Samuli Siltanen},
  journal= {arXiv preprint arXiv:0901.4220},
  year   = {2009}
}
R2 v1 2026-06-21T12:05:04.050Z