The methodology developed in this article is motivated by a wide range of prediction and uncertainty quantification problems that arise in Statistics, Machine Learning and Applied Mathematics, such as non-parametric regression, multi-class classification and inversion of partial differential equations. One popular formulation of such problems is as Bayesian inverse problems, where a prior distribution is used to regularize inference on a high-dimensional latent state, typically a function or a field. It is common that such priors are non-Gaussian, for example piecewise-constant or heavy-tailed, and/or hierarchical, in the sense of involving a further set of low-dimensional parameters, which, for example, control the scale or smoothness of t...
Abstract. Sparsity has become a key concept for solving of high-dimensional inverse problems using v...
Abstract. Sparsity has become a key concept for solving of high-dimensional inverse problems using v...
Many Bayesian inference problems require exploring the posterior distribution of high-dimensional pa...
The methodology developed in this article is motivated by a wide range of prediction and uncertainty...
The Bayesian formulation of inverse problems is attractive for three primary reasons: it provides a ...
Two major bottlenecks to the solution of large-scale Bayesian inverse problems are the scaling of po...
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...
The level set approach has proven widely successful in the study of inverse problems for interfaces,...
Thesis (S.M.)--Massachusetts Institute of Technology, Computation for Design and Optimization Progra...
Abstract. The computational complexity of MCMC methods for the exploration of complex probability me...
<p>Collections of large volumes of rich and complex data has become ubiquitous in recent years, posi...
Gaussian processes are valuable tools for non-parametric modelling, where typically an assumption of...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Aeronautics and Astronautics, 2...
The intrinsic dimensionality of an inverse problem is affected by prior information, the accuracy an...
Abstract. Sparsity has become a key concept for solving of high-dimensional inverse problems using v...
Abstract. Sparsity has become a key concept for solving of high-dimensional inverse problems using v...
Many Bayesian inference problems require exploring the posterior distribution of high-dimensional pa...
The methodology developed in this article is motivated by a wide range of prediction and uncertainty...
The Bayesian formulation of inverse problems is attractive for three primary reasons: it provides a ...
Two major bottlenecks to the solution of large-scale Bayesian inverse problems are the scaling of po...
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...
The level set approach has proven widely successful in the study of inverse problems for interfaces,...
Thesis (S.M.)--Massachusetts Institute of Technology, Computation for Design and Optimization Progra...
Abstract. The computational complexity of MCMC methods for the exploration of complex probability me...
<p>Collections of large volumes of rich and complex data has become ubiquitous in recent years, posi...
Gaussian processes are valuable tools for non-parametric modelling, where typically an assumption of...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Aeronautics and Astronautics, 2...
The intrinsic dimensionality of an inverse problem is affected by prior information, the accuracy an...
Abstract. Sparsity has become a key concept for solving of high-dimensional inverse problems using v...
Abstract. Sparsity has become a key concept for solving of high-dimensional inverse problems using v...
Many Bayesian inference problems require exploring the posterior distribution of high-dimensional pa...