33
2
v1v2v3 (latest)

Least squares approximations in linear statistical inverse learning problems

Abstract

Statistical inverse learning aims at recovering an unknown function ff from randomly scattered and possibly noisy point evaluations of another function gg, connected to ff via an ill-posed mathematical model. In this paper we blend statistical inverse learning theory with the classical regularization strategy of applying finite-dimensional projections. Our key finding is that coupling the number of random point evaluations with the choice of projection dimension, one can derive probabilistic convergence rates for the reconstruction error of the maximum likelihood (ML) estimator. Convergence rates in expectation are derived with a ML estimator complemented with a norm-based cut-off operation. Moreover, we prove that the obtained rates are minimax optimal.

View on arXiv
Comments on this paper