We study a nonparametric Bayesian approach to linear inverse problems under
discrete observations. We use the discrete Fourier transform to convert our
model into a truncated Gaussian sequence model, that is closely related to the
classical Gaussian sequence model. Upon placing the truncated series prior on
the unknown parameter, we show that as the number of observations
n→∞, the corresponding posterior distribution contracts around
the true parameter at a rate depending on the smoothness of the true parameter
and the prior, and the ill-posedness degree of the problem. Correct
combinations of these values lead to optimal posterior contraction rates (up to
logarithmic factors). Similarly, the frequentist coverage of Bayesian credible
sets is shown to be dependent on a combination of smoothness of the true
parameter and the prior, and the ill-posedness of the problem. Oversmoothing
priors lead to zero coverage, while undersmoothing priors produce highly
conservative results. Finally, we illustrate our theoretical results by
numerical examples.Comment: 22 pages, 2 figure