Deep neural network expression of posterior expectations in Bayesian PDE inversion
Metadata only
Datum
2020-12Typ
- Journal Article
Abstract
For Bayesian inverse problems with input-to-response maps given by well-posed partial differential equations and subject to uncertain parametric or function space input, we establish (under rather weak conditions on the 'forward', input-to-response maps) the parametric holomorphy of the data-to-QoI map relating observation data δ to the Bayesian estimate for an unknown quantity of interest (QoI). We prove exponential expression rate bounds for this data-to-QoI map by deep neural networks with rectified linear unit activation function, which are uniform with respect to the data δ taking values in a compact subset of R^K. Similar convergence rates are verified for polynomial and rational approximations of the data-to-QoI map. We discuss the extension to other activation functions, and to mere Lipschitz continuity of the data-to-QoI map. © 2020 IOP Publishing Ltd. Mehr anzeigen
Publikationsstatus
publishedExterne Links
Zeitschrift / Serie
Inverse ProblemsBand
Seiten / Artikelnummer
Verlag
Institute of PhysicsThema
Deep ReLU neural networks; Bayesian inverse problems; Approximation rates; Exponential convergence; Uncertainty quantificationOrganisationseinheit
03435 - Schwab, Christoph / Schwab, Christoph