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CAGE OF COVARIANCE IN CALIBRATION MODELING: REGRESSING MULTIPLE AND STRONGLY CORRELATED RESPONSE VARIABLES ONTO A LOW RANK SUBSPACE OF EXPLANATORY VARIABLES
2021
Chemometrics and Intelligent Laboratory Systems
A B S T R A C T In analytical chemistry, multivariate calibration is applied when substituting a time-consuming reference measurement (based on e.g. chromatography) with a high-throughput measurement (based on e.g. vibrational spectroscopy). An average error term, of the response variable, is often used to evaluate the performance of a calibration model. However, indirect relationships, between the response and explanatory variables, may be used for calibration. In such cases, model validity
doi:10.1016/j.chemolab.2021.104311
fatcat:nx6mqf6rkrb2difpwsq6aw2bpe