Least squares approximations in linear statistical inverse learning problems
Year of publication
2024
Authors
Helin Tapio
Abstract
Statistical inverse learning aims at recovering an unknown function from randomly scattered and possibly noisy point evaluations of another function , connected to 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 cutoff operation. Moreover, we prove that the obtained rates are minimax optimal.
Show moreOrganizations and authors
Publication type
Publication format
Article
Parent publication type
Journal
Article type
Original article
Audience
ScientificPeer-reviewed
Peer-ReviewedMINEDU's publication type classification code
A1 Journal article (refereed), original researchPublication channel information
Journal/Series
Volume
62
Issue
4
Pages
2025-2047
ISSN
Publication forum
Publication forum level
3
Open access
Open access in the publisher’s service
No
Self-archived
Yes
Other information
Fields of science
Mathematics
Internationality of the publisher
International
International co-publication
No
Co-publication with a company
No
DOI
10.1137/22M1538600
The publication is included in the Ministry of Education and Culture’s Publication data collection
Yes