2023
DOI: 10.3390/molecules28155672
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A Novel Variable Selection Method Based on Binning-Normalized Mutual Information for Multivariate Calibration

Abstract: Variable (wavelength) selection is essential in the multivariate analysis of near-infrared spectra to improve model performance and provide a more straightforward interpretation. This paper proposed a new variable selection method named binning-normalized mutual information (B-NMI) based on information entropy theory. “Data binning” was applied to reduce the effects of minor measurement errors and increase the features of near-infrared spectra. “Normalized mutual information” was employed to calculate the corr… Show more

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