A Modified Moving-Window Partial Least-Squares Method by Coupling with Sampling Error Profile Analysis for Variable Selection in Near-Infrared Spectral Analysis

被引:0
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作者
Wuye Yang
Wenming Wang
Ruoqiu Zhang
Feiyu Zhang
Yinran Xiong
Ting Wu
Wanchao Chen
Yiping Du
机构
[1] East China University of Science and Technology,Shanghai Key Laboratory of Functional Materials Chemistry, School of Chemistry & Molecular Engineering
[2] National Engineering Research Center of Edible Fungi,Institute of Edible Fungi, Shanghai Academy of Agriculture Sciences
[3] Key Laboratory of Edible Fungi Resources and Utilization (South),undefined
[4] Ministry of Agriculture,undefined
来源
Analytical Sciences | 2020年 / 36卷
关键词
Moving-window partial least-squares; sampling error profile analysis; variable selection; near infrared spectroscopy;
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学科分类号
摘要
In this study, a new variable selection method, named moving-window partial least-squares coupled with sampling error profile analysis (SEPA-MWPLS), is developed. With a moving window, moving-window partial least-squares (MWPLS) is used to find window intervals which show low residual sums of squares (RSS) of a calibration set. Sampling error profile analysis (SEPA) is a useful method based on Monte-Carlo Sampling and profile analysis for cross validation (CV). By combining MWPLS with SEPA, we can obtain more stable and reliable results. Besides, we simplify the plot of the RSS line so that it is easier to determine the informative intervals. In addition, a backward elimination strategy is used to optimize the combination of subintervals. The performance of SEPA-MWPLS was tested with two near-infrared (NIR) spectra datasets and was compared with PLS, MWPLS and Monte Carlo uninformative variable elimination (MC-UVE). The results show that SEPA-MWPLS can improve model performances significantly compared with MWPLS in the number of variables, root-mean-squared errors of CV, calibration and prediction (RMSECVs, RMSECs and RMSEPs). Meanwhile it also exhibits better performances than MC-UVE.
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页码:303 / 309
页数:6
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