We present an overview of Markov chain Monte Carlo, a sampling method for model inference and uncertainty quantification. We focus on the Bayesian approach to MCMC, which allows us to estimate the posterior distribution of model parameters, without needing to know the normalising constant in Bayes' theorem. Given an estimate of the posterior, we can then determine representative models (such as the expected model, and the maximum posterior probability model), the probability distributions for individual parameters, and the uncertainty about the predictions from these models. We also consider variable dimensional problems in which the number of model parameters is unknown and needs to be inferred. Such problems can be addressed with reversib...
This paper presents the application of a population Markov Chain Monte Carlo (MCMC) technique to gen...
In case of a non-linear relation linking the model to the data, numerical Markov Chain Monte Carlo (...
In this study, we aim to solve the seismic inversion in the Bayesian framework by generating samples...
International audienceWe present an overview of Markov chain Monte Carlo, a sampling method for mode...
International audienceWe present an overview of Markov chain Monte Carlo, a sampling method for mode...
a b s t r a c t We present an overview of Markov chain Monte Carlo, a sampling method for model infe...
This article considers Markov chain computational methods for incorporating uncertainty about the d...
This paper demonstrates for the first time the use of Markov Chain Monte Carlo (MCMC) simulation for...
Bayesian inference has found widespread application and use in science and engineering to reconcile ...
This chapter reviews the recent developments in Markov chain Monte Carlo simulation methods. These m...
This paper presents the application of a population Markov Chain Monte Carlo (MCMC) technique to gen...
Geotechnical models are usually associated with considerable amounts of model uncertainty. In this s...
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 (...
This paper presents the application of a population Markov Chain Monte Carlo (MCMC) technique to gen...
This paper presents the application of a population Markov Chain Monte Carlo (MCMC) technique to gen...
In case of a non-linear relation linking the model to the data, numerical Markov Chain Monte Carlo (...
In this study, we aim to solve the seismic inversion in the Bayesian framework by generating samples...
International audienceWe present an overview of Markov chain Monte Carlo, a sampling method for mode...
International audienceWe present an overview of Markov chain Monte Carlo, a sampling method for mode...
a b s t r a c t We present an overview of Markov chain Monte Carlo, a sampling method for model infe...
This article considers Markov chain computational methods for incorporating uncertainty about the d...
This paper demonstrates for the first time the use of Markov Chain Monte Carlo (MCMC) simulation for...
Bayesian inference has found widespread application and use in science and engineering to reconcile ...
This chapter reviews the recent developments in Markov chain Monte Carlo simulation methods. These m...
This paper presents the application of a population Markov Chain Monte Carlo (MCMC) technique to gen...
Geotechnical models are usually associated with considerable amounts of model uncertainty. In this s...
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 (...
This paper presents the application of a population Markov Chain Monte Carlo (MCMC) technique to gen...
This paper presents the application of a population Markov Chain Monte Carlo (MCMC) technique to gen...
In case of a non-linear relation linking the model to the data, numerical Markov Chain Monte Carlo (...
In this study, we aim to solve the seismic inversion in the Bayesian framework by generating samples...