AbstractIn univariate calibration problems two different estimators are commonly in use. They are referred to as the classical estimator and the inverse estimator. Krutchkoff (1967, Technometrics 9, No. 3 425–439) compared these two methods of calibration by means of an extensive Monte Carlo study. Without mathematical proof he concluded that the classical estimator has a uniformly greater mean squared error than the inverse estimator. Krutchkoffs paper resulted in an immediate controversy on the subject of his criterion, for the classical estimator has an infinite mean and mean squared error. In this paper we consider a generalization of the classical estimator for multivariate regression problems. We show that this estimator has a finite ...
Most of the papers on calibration are based on either classic or bayesian parametric context. In add...
The paper deals with the comparative calibration model, i.e. with a situation when both variables ar...
Most of the current expressions used to calculate figures of merit in multivariate calibration have ...
In univariate calibration problems two different estimators are commonly in use. They are referred t...
AbstractIn univariate calibration problems two different estimators are commonly in use. They are re...
Consider multivariate linear calibration of a single standard. We show that a selection of the q' mo...
AbstractThe problem of combining independent information from different sources in a multivariate ca...
AbstractIn univariate calibration, two standard estimators are usually opposed: the classical estima...
Multivariate calibration uses an estimated relationship between a multivariate response Y (of dimens...
We assume as model a standard multivariate regression of y on x, fitted to a controlled calibration ...
Much has been said about the classical and the inverse methods of calibration for the univariate and...
The statistical calibration problem treated here consists of constructing the interval estimates for...
A calibration method substitutes for measurements, X(,i), that are accurate but impractical or costl...
We propose a new method named calibrated multivariate regression (CMR) for fitting high dimensional ...
Since simple linear regression theory was established at the beginning of the 1900s, it has been use...
Most of the papers on calibration are based on either classic or bayesian parametric context. In add...
The paper deals with the comparative calibration model, i.e. with a situation when both variables ar...
Most of the current expressions used to calculate figures of merit in multivariate calibration have ...
In univariate calibration problems two different estimators are commonly in use. They are referred t...
AbstractIn univariate calibration problems two different estimators are commonly in use. They are re...
Consider multivariate linear calibration of a single standard. We show that a selection of the q' mo...
AbstractThe problem of combining independent information from different sources in a multivariate ca...
AbstractIn univariate calibration, two standard estimators are usually opposed: the classical estima...
Multivariate calibration uses an estimated relationship between a multivariate response Y (of dimens...
We assume as model a standard multivariate regression of y on x, fitted to a controlled calibration ...
Much has been said about the classical and the inverse methods of calibration for the univariate and...
The statistical calibration problem treated here consists of constructing the interval estimates for...
A calibration method substitutes for measurements, X(,i), that are accurate but impractical or costl...
We propose a new method named calibrated multivariate regression (CMR) for fitting high dimensional ...
Since simple linear regression theory was established at the beginning of the 1900s, it has been use...
Most of the papers on calibration are based on either classic or bayesian parametric context. In add...
The paper deals with the comparative calibration model, i.e. with a situation when both variables ar...
Most of the current expressions used to calculate figures of merit in multivariate calibration have ...