Spectrophotometric variable selection by mutual information

Citation:

Benoudjit N, François D, Meurens M, Verleysen M. Spectrophotometric variable selection by mutual information. Chemometrics and intelligent laboratory systems [Internet]. 2004;74 (02) :243-251.

Abstract:

Spectrophotometric data often comprise a great number of numerical components or variables that can be used in calibration models. When a large number of such variables are incorporated into a particular model, many difficulties arise, and it is often necessary to reduce the number of spectral variables. This paper proposes an incremental (Forward–Backward) procedure, initiated using an entropy-based criterion (mutual information), to choose the first variable. The advantages of the method are discussed; results in quantitative chemical analysis by spectrophotometry show the improvements obtained with respect to traditional and nonlinear calibration models.

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Last updated on 03/30/2020