In this article, we consider a Bayesian inverse problem associated to elliptic partial differential equations in two and three dimensions. This class of inverse problems is important in applications such as hydrology, but the complexity of the link function between unknown field and measurements can make it difficult to draw inference from the associated posterior. We prove that for this inverse problem a basic sequential Monte Carlo (SMC) method has a Monte Carlo rate of convergence with constants which are independent of the dimension of the discretization of the problem; indeed convergence of the SMC method is established in a function space setting. We also develop an enhancement of the SMC methods for inverse problems which were introd...
Bayesian inverse problems often involve sampling posterior distributions on infinite-dimensional fun...
For strongly non-linear and high-dimensional inverse problems, Markov chain Monte Carlo (MCMC) metho...
Bayesian inverse problems often involve sampling posterior distributions on infinite-dimensional fun...
In this article, we consider a Bayesian inverse problem associated to elliptic partial differential ...
In this article, we consider a Bayesian inverse problem associated to elliptic partial differential ...
The Bayesian approach to inverse problems, in which the posterior probability distribution on an unk...
We are interested in computing the expectation of a functional of a PDE solution under a Bayesian po...
The Bayesian approach to inverse problems, in which the posterior probability distribution on an unk...
We are interested in computing the expectation of a functional of a PDE solution under a Bayesian po...
Bayesian inverse problems often involve sampling posterior distributions on infinite-dimensional fun...
We consider the inverse problem of estimating the initial condition of a partial differential equati...
We consider the inverse problem of estimating the initial condition of a partial differential equati...
Bayesian inverse problems for partial differential equations arise from many important real world ap...
Bayesian inverse problems for partial differential equations arise from many important real world ap...
We introduce optimal transport based resampling in adaptive SMC. We consider elliptic inverse proble...
Bayesian inverse problems often involve sampling posterior distributions on infinite-dimensional fun...
For strongly non-linear and high-dimensional inverse problems, Markov chain Monte Carlo (MCMC) metho...
Bayesian inverse problems often involve sampling posterior distributions on infinite-dimensional fun...
In this article, we consider a Bayesian inverse problem associated to elliptic partial differential ...
In this article, we consider a Bayesian inverse problem associated to elliptic partial differential ...
The Bayesian approach to inverse problems, in which the posterior probability distribution on an unk...
We are interested in computing the expectation of a functional of a PDE solution under a Bayesian po...
The Bayesian approach to inverse problems, in which the posterior probability distribution on an unk...
We are interested in computing the expectation of a functional of a PDE solution under a Bayesian po...
Bayesian inverse problems often involve sampling posterior distributions on infinite-dimensional fun...
We consider the inverse problem of estimating the initial condition of a partial differential equati...
We consider the inverse problem of estimating the initial condition of a partial differential equati...
Bayesian inverse problems for partial differential equations arise from many important real world ap...
Bayesian inverse problems for partial differential equations arise from many important real world ap...
We introduce optimal transport based resampling in adaptive SMC. We consider elliptic inverse proble...
Bayesian inverse problems often involve sampling posterior distributions on infinite-dimensional fun...
For strongly non-linear and high-dimensional inverse problems, Markov chain Monte Carlo (MCMC) metho...
Bayesian inverse problems often involve sampling posterior distributions on infinite-dimensional fun...