A Comparison of Sparse Partial Least Squares and Elastic Net in Wavelength Selection on NIR Spectroscopy Data

Fu, Guang-Hui and Zong, Min-Jie and Wang, Feng-Hua and Yi, Lun-Zhao (2019) A Comparison of Sparse Partial Least Squares and Elastic Net in Wavelength Selection on NIR Spectroscopy Data. International Journal of Analytical Chemistry, 2019. pp. 1-12. ISSN 1687-8760

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Abstract

Elastic net (Enet) and sparse partial least squares (SPLS) are frequently employed for wavelength selection and model calibration in analysis of near infrared spectroscopy data. Enet and SPLS can perform variable selection and model calibration simultaneously. And they also tend to select wavelength intervals rather than individual wavelengths when the predictors are multicollinear. In this paper, we focus on comparison of Enet and SPLS in interval wavelength selection and model calibration for near infrared spectroscopy data. The results from both simulation and real spectroscopy data show that Enet method tends to select less predictors as key variables than SPLS; thus it gets more parsimony model and brings advantages for model interpretation. SPLS can obtain much lower mean square of prediction error (MSE) than Enet. So SPLS is more suitable when the attention is to get better model fitting accuracy. The above conclusion is still held when coming to performing the strongly correlated NIR spectroscopy data whose predictors present group structures, Enet exhibits more sparse property than SPLS, and the selected predictors (wavelengths) are segmentally successive.

Item Type: Article
Subjects: OA Digital Library > Chemical Science
Depositing User: Unnamed user with email support@oadigitallib.org
Date Deposited: 04 Jan 2023 07:15
Last Modified: 11 Jul 2024 07:58
URI: http://library.thepustakas.com/id/eprint/46

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