International audienceStatistical calibration of model parameters conditioned on observations is performed in a Bayesian framework by evaluating the joint posterior probability density function (pdf) of the parameters. The posterior pdf is very often inferred by sampling the parameters with Markov Chain Monte Carlo (MCMC) algorithms. Recently, an alternative technique to calculate the so-called Maximal Conditional Posterior Distribution (MCPD) appeared. This technique infers the individual probability distribution of a given parameter under the condition that the other parameters of the model are optimal. Whereas the MCMC approach samples probable draws of the parameters, the MCPD samples the most probable draws when one of the parameters i...
The posterior probability distribution for a set of model parameters encodes all that the data have ...
A new technique, Bayesian Monte Carlo (BMC), is used to quantify errors in water quality models caus...
International audienceWe present an overview of Markov chain Monte Carlo, a sampling method for mode...
Statistical calibration of model parameters conditioned on observations is performed in a Bayesian f...
International audienceWe introduce the concept of Maximal Conditional Posterior Distribution (MCPD) ...
We investigate a computer model calibration technique inspired by the wellknown Bayesian framework o...
The Bayesian approach allows one to estimate model parameters from prior expert knowledge about par...
The evolution of Bayesian approaches for model uncertainty over the past decade has been remarkable....
Uncertainty analysis (UA) has received substantial attention in water resources during the last deca...
International audienceRandom variables characterized by a joint probability distribution function (j...
124 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2009.In recent years, interest in ...
International audienceWe investigate a computer model calibration technique inspired by the well-kno...
In psychophysical studies the psychometric function is used to model the relation between the physic...
We discuss a comparison of the Bayesian approaches to uncertainty assessment in deterministic models...
The behaviour of many processes in science and engineering can be accurately described by dynamical ...
The posterior probability distribution for a set of model parameters encodes all that the data have ...
A new technique, Bayesian Monte Carlo (BMC), is used to quantify errors in water quality models caus...
International audienceWe present an overview of Markov chain Monte Carlo, a sampling method for mode...
Statistical calibration of model parameters conditioned on observations is performed in a Bayesian f...
International audienceWe introduce the concept of Maximal Conditional Posterior Distribution (MCPD) ...
We investigate a computer model calibration technique inspired by the wellknown Bayesian framework o...
The Bayesian approach allows one to estimate model parameters from prior expert knowledge about par...
The evolution of Bayesian approaches for model uncertainty over the past decade has been remarkable....
Uncertainty analysis (UA) has received substantial attention in water resources during the last deca...
International audienceRandom variables characterized by a joint probability distribution function (j...
124 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2009.In recent years, interest in ...
International audienceWe investigate a computer model calibration technique inspired by the well-kno...
In psychophysical studies the psychometric function is used to model the relation between the physic...
We discuss a comparison of the Bayesian approaches to uncertainty assessment in deterministic models...
The behaviour of many processes in science and engineering can be accurately described by dynamical ...
The posterior probability distribution for a set of model parameters encodes all that the data have ...
A new technique, Bayesian Monte Carlo (BMC), is used to quantify errors in water quality models caus...
International audienceWe present an overview of Markov chain Monte Carlo, a sampling method for mode...