In model development, model calibration and validation play complementary roles toward learning reliable models. In this article, we expand the Bayesian Validation Metric framework to a general calibration and validation framework by inverting the validation mathematics into a generalized Bayesian method for model calibration and regression. We perform Bayesian regression based on a user's definition of model-data agreement. This allows for model selection on any type of data distribution, unlike Bayesian and standard regression techniques, that “fail” in some cases. We show that our tool is capable of representing and combining least squares, likelihood-based, and Bayesian calibration techniques in a single framework while being able to ge...
In this work we present a pedagogical tumour growth example, in which we apply calibration and valid...
This work addresses the issue of statistical model updating and correlation. The updating procedure ...
peer-reviewedThis thesis is concerned with the calibration of disease models in order to inform dec...
Thesis: S.M., Massachusetts Institute of Technology, Computation for Design and Optimization Program...
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...
This paper examines how calibration performs under different levels of uncertainty in model input da...
Abstract: When the goal is inference about an unknown θ and prediction of future data D * on the bas...
We consider prediction and uncertainty analysis for systems which are approximated using complex mat...
In the development of Bayesian model specification for inference and prediction we focus on the con...
Abstract: We propose a general Bayesian criterion for model assessment. The cri-terion is constructe...
This paper deals with model validation of dynamic systems (with vehicle systems being of particular ...
International audienceModern science makes use of computer models to reproduce and predict complex p...
In this paper we discuss some concepts and a methodology of a Bayesian framework for model validatio...
AbstractThis paper proposes a lightweight Bayesian calibration of dynamic models that accounts for m...
In this work we present a pedagogical tumour growth example, in which we apply calibration and valid...
This work addresses the issue of statistical model updating and correlation. The updating procedure ...
peer-reviewedThis thesis is concerned with the calibration of disease models in order to inform dec...
Thesis: S.M., Massachusetts Institute of Technology, Computation for Design and Optimization Program...
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...
This paper examines how calibration performs under different levels of uncertainty in model input da...
Abstract: When the goal is inference about an unknown θ and prediction of future data D * on the bas...
We consider prediction and uncertainty analysis for systems which are approximated using complex mat...
In the development of Bayesian model specification for inference and prediction we focus on the con...
Abstract: We propose a general Bayesian criterion for model assessment. The cri-terion is constructe...
This paper deals with model validation of dynamic systems (with vehicle systems being of particular ...
International audienceModern science makes use of computer models to reproduce and predict complex p...
In this paper we discuss some concepts and a methodology of a Bayesian framework for model validatio...
AbstractThis paper proposes a lightweight Bayesian calibration of dynamic models that accounts for m...
In this work we present a pedagogical tumour growth example, in which we apply calibration and valid...
This work addresses the issue of statistical model updating and correlation. The updating procedure ...
peer-reviewedThis thesis is concerned with the calibration of disease models in order to inform dec...