Bayesian model selection enables comparison and ranking of conceptual subsurface models described by spatial prior models, according to the support provided by available geophysical data. Deep generative neural networks can efficiently encode such complex spatial priors, thereby, allowing for a strong model dimensionality reduction that comes at the price of enhanced non-linearity. In this setting, we explore a recent adaptive sequential Monte Carlo (ASMC) approach that builds on annealed importance sampling (AIS); a method that provides both the posterior probability density function (PDF) and the evidence (a central quantity for Bayesian model selection) through a particle approximation. Both techniques are well suited to parallel computa...
We address the complex problem of sequential Bayesian learning and model selection for neural networ...
Monte Carlo Markov Chain (MCMC) methods commonly confront two fundamental challenges: the accurate c...
We address the complex problem of sequential Bayesian learning and model selection for neural networ...
For strongly non-linear and high-dimensional inverse problems, Markov chain Monte Carlo (MCMC) metho...
For strongly non-linear and high-dimensional inverse problems, Markov chain Monte Carlo (MCMC) metho...
This is the final version of the article. It first appeared from Curran Associates via http://papers...
ABSTRACT We introduce preconditioned Monte Carlo (PMC), a novel Monte Carlo method fo...
We critically examine the performance of sequential geostatistical resampling (SGR) as a model propo...
In case of a non-linear relation linking the model to the data, numerical Markov Chain Monte Carlo (...
In case of a non-linear relation linking the model to the data, numerical Markov Chain Monte Carlo (...
In case of a non-linear relation linking the model to the data, numerical Markov Chain Monte Carlo (...
Monte Carlo Markov Chain (MCMC) methods commonly confront two fundamental challenges: the accurate c...
Monte Carlo Markov Chain (MCMC) methods commonly confront two fundamental challenges: the accurate c...
Bayesian methods are extensively used to analyse geophysical data sets. A critical and somewhat over...
Monte Carlo Markov Chain (MCMC) methods commonly confront two fundamental challenges: the accurate c...
We address the complex problem of sequential Bayesian learning and model selection for neural networ...
Monte Carlo Markov Chain (MCMC) methods commonly confront two fundamental challenges: the accurate c...
We address the complex problem of sequential Bayesian learning and model selection for neural networ...
For strongly non-linear and high-dimensional inverse problems, Markov chain Monte Carlo (MCMC) metho...
For strongly non-linear and high-dimensional inverse problems, Markov chain Monte Carlo (MCMC) metho...
This is the final version of the article. It first appeared from Curran Associates via http://papers...
ABSTRACT We introduce preconditioned Monte Carlo (PMC), a novel Monte Carlo method fo...
We critically examine the performance of sequential geostatistical resampling (SGR) as a model propo...
In case of a non-linear relation linking the model to the data, numerical Markov Chain Monte Carlo (...
In case of a non-linear relation linking the model to the data, numerical Markov Chain Monte Carlo (...
In case of a non-linear relation linking the model to the data, numerical Markov Chain Monte Carlo (...
Monte Carlo Markov Chain (MCMC) methods commonly confront two fundamental challenges: the accurate c...
Monte Carlo Markov Chain (MCMC) methods commonly confront two fundamental challenges: the accurate c...
Bayesian methods are extensively used to analyse geophysical data sets. A critical and somewhat over...
Monte Carlo Markov Chain (MCMC) methods commonly confront two fundamental challenges: the accurate c...
We address the complex problem of sequential Bayesian learning and model selection for neural networ...
Monte Carlo Markov Chain (MCMC) methods commonly confront two fundamental challenges: the accurate c...
We address the complex problem of sequential Bayesian learning and model selection for neural networ...