AbstractIn univariate calibration, two standard estimators are usually opposed: the classical estimator and the inverse regression estimator. Controversies have followed the use of both estimators and we consider them from a decision-theoretic perspective, establishing the inadmissibility of the classical estimator and the admissibility of the inverse regression estimator. The latter allowing for a Bayesian interpretation, we also develop a fully noninformative study of the calibration model and derive a reference prior which avoids the inconsistency drawbacks of the inverse regression estimator
The inverse estimation problem consists of a calibration stage and a prediction stage. In the calibr...
Univariate calibration models are intended to link a quantity of interest X (e.g. the concentration ...
<p>Bayesian calibration is used to study computer models in the presence of both a calibration param...
AbstractIn univariate calibration, two standard estimators are usually opposed: the classical estima...
Since simple linear regression theory was established at the beginning of the 1900s, it has been use...
Much has been said about the classical and the inverse methods of calibration for the univariate and...
A calibration method substitutes for measurements, X(,i), that are accurate but impractical or costl...
We assume as model a standard multivariate regression of y on x, fitted to a controlled calibration ...
AbstractIn univariate calibration problems two different estimators are commonly in use. They are re...
A typical calibration problem contains two parts. The first part is called the calibration experimen...
This paper considers the classical and inverse calibration estimators and discusses the consequences...
In univariate calibration problems two different estimators are commonly in use. They are referred t...
This paper considers the problem of linear calibration and presents two estimators arising from a sy...
AbstractThis paper derives a class of first order probability matching priors and a complete catalog...
This article considers one side hypothesis testing on the unknown value of the explanatory variable ...
The inverse estimation problem consists of a calibration stage and a prediction stage. In the calibr...
Univariate calibration models are intended to link a quantity of interest X (e.g. the concentration ...
<p>Bayesian calibration is used to study computer models in the presence of both a calibration param...
AbstractIn univariate calibration, two standard estimators are usually opposed: the classical estima...
Since simple linear regression theory was established at the beginning of the 1900s, it has been use...
Much has been said about the classical and the inverse methods of calibration for the univariate and...
A calibration method substitutes for measurements, X(,i), that are accurate but impractical or costl...
We assume as model a standard multivariate regression of y on x, fitted to a controlled calibration ...
AbstractIn univariate calibration problems two different estimators are commonly in use. They are re...
A typical calibration problem contains two parts. The first part is called the calibration experimen...
This paper considers the classical and inverse calibration estimators and discusses the consequences...
In univariate calibration problems two different estimators are commonly in use. They are referred t...
This paper considers the problem of linear calibration and presents two estimators arising from a sy...
AbstractThis paper derives a class of first order probability matching priors and a complete catalog...
This article considers one side hypothesis testing on the unknown value of the explanatory variable ...
The inverse estimation problem consists of a calibration stage and a prediction stage. In the calibr...
Univariate calibration models are intended to link a quantity of interest X (e.g. the concentration ...
<p>Bayesian calibration is used to study computer models in the presence of both a calibration param...