The intrinsic dimensionality of an inverse problem is affected by prior information, the accuracy and number of observations, and the smoothing properties of the forward operator. From a Bayesian perspective, changes from the prior to the posterior may, in many problems, be confined to a relatively low-dimensional subspace of the parameter space. We present a dimension reduction approach that defines and identifies such a subspace, called the 'likelihood-informed subspace' (LIS), by characterizing the relative influences of the prior and the likelihood over the support of the posterior distribution. This identification enables new and more efficient computational methods for Bayesian inference with nonlinear forward models and Gaussian prio...
Computational inverse problems related to partial differential equations (PDEs) often contain nuisan...
The methodology developed in this article is motivated by a wide range of prediction and uncertainty...
42 pages, 16 figures, 1 tableWe consider the problem of reducing the dimensions of parameters and da...
Two major bottlenecks to the solution of large-scale Bayesian inverse problems are the scaling of po...
International audienceWe propose a dimension reduction technique for Bayesian inverse problems with ...
International audienceMarkov chain Monte Carlo (MCMC) methods form one of the algorithmic foundation...
We present a model reduction approach to the solution of large-scale statistical inverse problems in...
A priori dimension reduction is a widely adopted technique for reducing the computational complexity...
Thesis (S.M.)--Massachusetts Institute of Technology, Computation for Design and Optimization Progra...
Many inverse problems arising in applications come from continuum models where the unknown parameter...
We present a model reduction approach to the solution of large-scale statistical inverse problems in...
Many inverse problems arising in applications come from continuum models where the unknown parameter...
Bayesian inversion generates a posterior distribution of model parameters from an observation equati...
We consider a Bayesian approach to nonlinear inverse problems in which the unknown quantity is a spa...
In the Bayesian approach to inverse problems, data are often informative, relative to the prior, onl...
Computational inverse problems related to partial differential equations (PDEs) often contain nuisan...
The methodology developed in this article is motivated by a wide range of prediction and uncertainty...
42 pages, 16 figures, 1 tableWe consider the problem of reducing the dimensions of parameters and da...
Two major bottlenecks to the solution of large-scale Bayesian inverse problems are the scaling of po...
International audienceWe propose a dimension reduction technique for Bayesian inverse problems with ...
International audienceMarkov chain Monte Carlo (MCMC) methods form one of the algorithmic foundation...
We present a model reduction approach to the solution of large-scale statistical inverse problems in...
A priori dimension reduction is a widely adopted technique for reducing the computational complexity...
Thesis (S.M.)--Massachusetts Institute of Technology, Computation for Design and Optimization Progra...
Many inverse problems arising in applications come from continuum models where the unknown parameter...
We present a model reduction approach to the solution of large-scale statistical inverse problems in...
Many inverse problems arising in applications come from continuum models where the unknown parameter...
Bayesian inversion generates a posterior distribution of model parameters from an observation equati...
We consider a Bayesian approach to nonlinear inverse problems in which the unknown quantity is a spa...
In the Bayesian approach to inverse problems, data are often informative, relative to the prior, onl...
Computational inverse problems related to partial differential equations (PDEs) often contain nuisan...
The methodology developed in this article is motivated by a wide range of prediction and uncertainty...
42 pages, 16 figures, 1 tableWe consider the problem of reducing the dimensions of parameters and da...