Many inverse problems arising in applications come from continuum models where the unknown parameter is a field. In practice the unknown field is discretized, resulting in a problem in ℝ^N, with an understanding that refining the discretization, that is, increasing N, will often be desirable. In the context of Bayesian inversion this situation suggests the importance of two issues: (i) defining hyperparameters in such a way that they are interpretable in the continuum limit N →∞ and so that their values may be compared between different discretization levels; and (ii) understanding the efficiency of algorithms for probing the posterior distribution as a function of large $N.$ Here we address these two issues in the context of linear inverse...
In many large-scale inverse problems, such as computed tomography and image deblurring, characteriza...
The methodology developed in this article is motivated by a wide range of prediction and uncertainty...
Hierarchical modeling and learning has proven very powerful in the field of Gaussian process regress...
Many inverse problems arising in applications come from continuum models where the unknown parameter...
Many inverse problems arising in applications come from continuum models where the unknown parameter...
Abstract Many inverse problems arising in applications come from continuum models where the unknown ...
Abstract. Many inverse problems arising in applications come from continuum models where the unknown...
The goal of this thesis is to contribute to the formulation and understanding of the Bayesian appro...
We consider the use of Gaussian process (GP) priors for solving inverse problems in a Bayesian frame...
Solving ill-posed inverse problems by Bayesian inference has recently attracted considerable attenti...
Two major bottlenecks to the solution of large-scale Bayesian inverse problems are the scaling of po...
The formulation of Bayesian inverse problems involves choosing prior distributions; choices that see...
We consider statistical linear inverse problems in Hilbert spaces of the type ˆ Y = Kx + U where we ...
International audienceThis paper is devoted to the problem of sampling Gaussian distributions in hig...
The Bayesian formulation of inverse problems is attractive for three primary reasons: it provides a ...
In many large-scale inverse problems, such as computed tomography and image deblurring, characteriza...
The methodology developed in this article is motivated by a wide range of prediction and uncertainty...
Hierarchical modeling and learning has proven very powerful in the field of Gaussian process regress...
Many inverse problems arising in applications come from continuum models where the unknown parameter...
Many inverse problems arising in applications come from continuum models where the unknown parameter...
Abstract Many inverse problems arising in applications come from continuum models where the unknown ...
Abstract. Many inverse problems arising in applications come from continuum models where the unknown...
The goal of this thesis is to contribute to the formulation and understanding of the Bayesian appro...
We consider the use of Gaussian process (GP) priors for solving inverse problems in a Bayesian frame...
Solving ill-posed inverse problems by Bayesian inference has recently attracted considerable attenti...
Two major bottlenecks to the solution of large-scale Bayesian inverse problems are the scaling of po...
The formulation of Bayesian inverse problems involves choosing prior distributions; choices that see...
We consider statistical linear inverse problems in Hilbert spaces of the type ˆ Y = Kx + U where we ...
International audienceThis paper is devoted to the problem of sampling Gaussian distributions in hig...
The Bayesian formulation of inverse problems is attractive for three primary reasons: it provides a ...
In many large-scale inverse problems, such as computed tomography and image deblurring, characteriza...
The methodology developed in this article is motivated by a wide range of prediction and uncertainty...
Hierarchical modeling and learning has proven very powerful in the field of Gaussian process regress...