Kaarnioja, V. and Schillings, C. (2024) Quasi-Monte Carlo for Bayesian design of experiment problems governed by parametric PDEs. Preprint ArXiv . (Submitted)
Full text not available from this repository.
Abstract
This paper contributes to the study of optimal experimental design for Bayesian inverse problems governed by partial differential equations (PDEs). We derive estimates for the parametric regularity of multivariate double integration problems over high-dimensional parameter and data domains arising in Bayesian optimal design problems. We provide a detailed analysis for these double integration problems using two approaches: a full tensor product and a sparse tensor product combination of quasi-Monte Carlo (QMC) cubature rules over the parameter and data domains. Specifically, we show that the latter approach significantly improves the convergence rate, exhibiting performance comparable to that of QMC integration of a single high-dimensional integral. Furthermore, we numerically verify the predicted convergence rates for an elliptic PDE problem with an unknown diffusion coefficient in two spatial dimensions, offering empirical evidence supporting the theoretical results and highlighting practical applicability.
Item Type: | Article |
---|---|
Subjects: | Mathematical and Computer Sciences > Mathematics > Applied Mathematics |
Divisions: | Department of Mathematics and Computer Science > Institute of Mathematics > Deterministic and Stochastic PDEs Group |
ID Code: | 3201 |
Deposited By: | Sandra Krämer |
Deposited On: | 06 Dec 2024 14:35 |
Last Modified: | 06 Dec 2024 14:35 |
Repository Staff Only: item control page