The Bayesian approach to inverse problems typically relies on posterior sampling approaches, such as Markov chain Monte Carlo, for which the generation of each sample requires one or more evaluations of the parameter-to-observable map or forward model. When these evaluations are computationally intensive, approximations of the forward model are essential to accelerating sample-based inference. Yet the construction of globally accurate approximations for nonlinear forward models can be computationally prohibitive and in fact unnecessary, as the posterior distribution typically concentrates on a small fraction of the support of the prior distribution. We present a new approach that uses stochastic optimization to construct polynomial approxim...
We present a new approach to Bayesian inference that entirely avoids Markov chain simulation, by con...
Polynomial chaos expansions are used to reduce the computational cost in the Bayesian solu-tions of ...
In computational inverse problems, it is common that a detailed and accurate forward model is approx...
The Bayesian inversion is a natural approach to the solution of inverse problems based on uncertain ...
summary:The Bayesian inversion is a natural approach to the solution of inverse problems based on un...
High-dimensional inverse problems present a challenge for Markov chain Monte Carlo (MCMC)-type sampl...
Abstract. High-dimensional inverse problems present a challenge for Markov chain Monte Carlo (MCMC)-...
We present an efficient numerical strategy for the Bayesian solution of inverse problems. Stochastic...
Solution of statistical inverse problems via the frequentist or Bayesian approaches described in ear...
In the Bayesian approach to inverse problems, data are often informative, relative to the prior, onl...
In this paper we introduce polynomial chaos in the stochastic forward model used to solve the invers...
Polynomial chaos expansions are used to reduce the computational cost in the Bayesian solu-tions of ...
In this paper we introduce polynomial chaos in the stochastic forward model used to solve the invers...
Over the last a few decades, a spectrum of methods for the solution of inverse problems has been exa...
Polynomial chaos expansions are used to reduce the computational cost in the Bayesian solutions of i...
We present a new approach to Bayesian inference that entirely avoids Markov chain simulation, by con...
Polynomial chaos expansions are used to reduce the computational cost in the Bayesian solu-tions of ...
In computational inverse problems, it is common that a detailed and accurate forward model is approx...
The Bayesian inversion is a natural approach to the solution of inverse problems based on uncertain ...
summary:The Bayesian inversion is a natural approach to the solution of inverse problems based on un...
High-dimensional inverse problems present a challenge for Markov chain Monte Carlo (MCMC)-type sampl...
Abstract. High-dimensional inverse problems present a challenge for Markov chain Monte Carlo (MCMC)-...
We present an efficient numerical strategy for the Bayesian solution of inverse problems. Stochastic...
Solution of statistical inverse problems via the frequentist or Bayesian approaches described in ear...
In the Bayesian approach to inverse problems, data are often informative, relative to the prior, onl...
In this paper we introduce polynomial chaos in the stochastic forward model used to solve the invers...
Polynomial chaos expansions are used to reduce the computational cost in the Bayesian solu-tions of ...
In this paper we introduce polynomial chaos in the stochastic forward model used to solve the invers...
Over the last a few decades, a spectrum of methods for the solution of inverse problems has been exa...
Polynomial chaos expansions are used to reduce the computational cost in the Bayesian solutions of i...
We present a new approach to Bayesian inference that entirely avoids Markov chain simulation, by con...
Polynomial chaos expansions are used to reduce the computational cost in the Bayesian solu-tions of ...
In computational inverse problems, it is common that a detailed and accurate forward model is approx...