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Chemometrics / Linear regression / Principal component analysis / Ordinary least squares / Least squares / Degrees of freedom / Orthogonality / Variance / Statistics / Regression analysis / Partial least squares regression
Date: 2006-02-15 15:59:14
Chemometrics
Linear regression
Principal component analysis
Ordinary least squares
Least squares
Degrees of freedom
Orthogonality
Variance
Statistics
Regression analysis
Partial least squares regression

JOURNAL OF CHEMOMETRICS J. Chemometrics 2005; 19: 45–54 Published online in Wiley InterScience (www.interscience.wiley.com). DOI: cem.906 Partial least squares, Beer’s law and the net analyte signal: statisti

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