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The Partial Least-Squares Model

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Introduction to Multivariate Calibration
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Abstract

The most popular first-order model based on partial least-squares is presented, and a range of applications are shown, from single and multiple analyte determinations to sample discrimination.

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Olivieri, A.C. (2018). The Partial Least-Squares Model. In: Introduction to Multivariate Calibration. Springer, Cham. https://doi.org/10.1007/978-3-319-97097-4_7

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