We investigate a computer model calibration technique inspired by the wellknown Bayesian framework of Kennedy and O'Hagan. We tackle the full Bayesian formulation where model parameter and model discrepancy hyperparameters are estimated jointly and reduce the problem dimensionality by introducing a functional relationship that we call the Full Maximum a Posteriori (FMP) method. This method also eliminates the need for a true value of model parameters that caused identifiability issues in the KOH formulation. When the joint posterior is approximated as a mixture of Gaussians, the FMP calibration is proved to avoid some pitfalls of the KOH calibration, namely missing some probability regions and underestimating the posterior variance. We then...
An efficient algorithm is proposed for Bayesian model calibration, which is commonly used to estimat...
For many real systems, several computer models may exist with different physics and predictive abili...
An efficient algorithm is proposed for Bayesian model calibration, which is commonly used to estimat...
We investigate a computer model calibration technique inspired by the wellknown Bayesian framework o...
International audienceWe investigate a computer model calibration technique inspired by the well-kno...
<p>Bayesian calibration is used to study computer models in the presence of both a calibration param...
We consider prediction and uncertainty analysis for systems which are approximated using complex mat...
International audienceModern science makes use of computer models to reproduce and predict complex p...
In the context of computer models, calibration is the process of estimating unknown simulator parame...
Computer models, aiming at simulating a complex real system, are often calibrated in the light of da...
Bayesian statistics may constitute the core of a consistent and comprehensive framework for the stat...
Bayesian statistics may constitute the core of a consistent and comprehensive framework for the stat...
Statistical calibration of model parameters conditioned on observations is performed in a Bayesian f...
This paper develops a Bayesian network-based method for the calibration of multi-physics models, int...
We often want to learn about physical processes that are described by complex nonlinear mathematical...
An efficient algorithm is proposed for Bayesian model calibration, which is commonly used to estimat...
For many real systems, several computer models may exist with different physics and predictive abili...
An efficient algorithm is proposed for Bayesian model calibration, which is commonly used to estimat...
We investigate a computer model calibration technique inspired by the wellknown Bayesian framework o...
International audienceWe investigate a computer model calibration technique inspired by the well-kno...
<p>Bayesian calibration is used to study computer models in the presence of both a calibration param...
We consider prediction and uncertainty analysis for systems which are approximated using complex mat...
International audienceModern science makes use of computer models to reproduce and predict complex p...
In the context of computer models, calibration is the process of estimating unknown simulator parame...
Computer models, aiming at simulating a complex real system, are often calibrated in the light of da...
Bayesian statistics may constitute the core of a consistent and comprehensive framework for the stat...
Bayesian statistics may constitute the core of a consistent and comprehensive framework for the stat...
Statistical calibration of model parameters conditioned on observations is performed in a Bayesian f...
This paper develops a Bayesian network-based method for the calibration of multi-physics models, int...
We often want to learn about physical processes that are described by complex nonlinear mathematical...
An efficient algorithm is proposed for Bayesian model calibration, which is commonly used to estimat...
For many real systems, several computer models may exist with different physics and predictive abili...
An efficient algorithm is proposed for Bayesian model calibration, which is commonly used to estimat...