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Bayesian Nonlinear Statistical Inverse Problems Richard Nickl

  • SKU: BELL-55550218
Bayesian Nonlinear Statistical Inverse Problems Richard Nickl
$ 31.00 $ 45.00 (-31%)

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Bayesian Nonlinear Statistical Inverse Problems Richard Nickl instant download after payment.

Publisher: European Mathematical Society
File Extension: PDF
File size: 1.86 MB
Pages: 171
Author: Richard Nickl
ISBN: 9783985470532, 3985470537
Language: English
Year: 2023

Product desciption

Bayesian Nonlinear Statistical Inverse Problems Richard Nickl by Richard Nickl 9783985470532, 3985470537 instant download after payment.

Bayesian methods based on Gaussian process priors are frequently used in statistical inverse problems arising with partial differential equations (PDEs). They can be implemented by Markov chain Monte Carlo (MCMC) algorithms. The underlying statistical models are naturally high- or infinite-dimensional, and this book presents a rigorous mathematical analysis of the statistical performance, and algorithmic complexity, of such methods in a natural setting of non-linear random design regression. Due to the non-linearity present in many of these inverse problems, natural least squares functionals are non-convex, and the Bayesian paradigm presents an attractive alternative to optimization-based approaches. This book develops a general theory of Bayesian inference for non-linear forward maps and rigorously considers two PDE model examples arising with Darcy's problem and a Schrödinger equation. The focus is initially on statistical consistency of Gaussian process methods and then moves on to study local fluctuations and approximations of posterior distributions by Gaussian or log-concave measures whose curvature is described by PDE mapping properties of underlying “information operators”. Applications to the algorithmic runtime of gradient-based MCMC methods are discussed, as well as computation time lower bounds for worst case performance of some algorithms.

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