Parameter estimation by implicit sampling
Matthias Morzfeld, Xuemin Tu, Jon Wilkening, and Alexandre J. Chorin

TL;DR
This paper introduces an implicit sampling method for Bayesian parameter estimation in PDE models, offering a dimension-independent approach that avoids issues of traditional MCMC methods, demonstrated through a diffusion coefficient estimation example.
Contribution
The paper presents a novel, dimension-independent implementation of implicit sampling for parameter estimation, integrating multi-grid techniques and adjoint-based gradient computations.
Findings
Achieves mesh-independence in parameter estimation.
Avoids MCMC issues like burn-in and sample correlation.
Successfully estimates diffusion coefficient from sparse data.
Abstract
Implicit sampling is a weighted sampling method that is used in data assimilation, where one sequentially updates estimates of the state of a stochastic model based on a stream of noisy or incomplete data. Here we describe how to use implicit sampling in parameter estimation problems, where the goal is to find parameters of a numerical model, e.g.~a partial differential equation (PDE), such that the output of the numerical model is compatible with (noisy) data. We use the Bayesian approach to parameter estimation, in which a posterior probability density describes the probability of the parameter conditioned on data and compute an empirical estimate of this posterior with implicit sampling. Our approach generates independent samples, so that some of the practical difficulties one encounters with Markov Chain Monte Carlo methods, e.g.~burn-in time or correlations among dependent samples,…
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