Data-Driven Forward Discretizations for Bayesian Inversion
Author(s)
Bigoni, D; Chen, Y; Trillos, N Garcia; Marzouk, Y; Sanz-Alonso, D
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© 2020 IOP Publishing Ltd. This paper suggests a framework for the learning of discretizations of expensive forward models in Bayesian inverse problems. The main idea is to incorporate the parameters governing the discretization as part of the unknown to be estimated within the Bayesian machinery. We numerically show that in a variety of inverse problems arising in mechanical engineering, signal processing and the geosciences, the observations contain useful information to guide the choice of discretization.
Date issued
2020Department
Massachusetts Institute of Technology. Department of Aeronautics and Astronautics; Statistics and Data Science Center (Massachusetts Institute of Technology)Journal
Inverse Problems
Publisher
IOP Publishing