| Literature DB >> 32090279 |
Xiangzhong Song1, Guorong Du2, Qianqian Li3, Guo Tang1, Yue Huang4.
Abstract
A novel strategy of variable selection approach named dynamic backward interval partial least squares-competitive adaptive reweighted sampling (DBiPLS-CARS) was proposed in this study. Near-infrared data sets of three different agro-products, namely corn, crop processing lamina, and plant leaf samples, were collected to investigate the performance of the proposed method. Weak relevant variables were first removed by DBiPLS and a refined selection of the remaining variables was then conducted by CARS. The Monte Carlo uninformative variable elimination (MCUVE) was used as a classical beforehand uninformative variable elimination method for comparison. Results showed that DBiPLS can select informative variables more continuously than MCUVE. Some synergistic variables which may be omitted by MCUVE can be retained by DBiPLS. By contrast, MCUVE can hardly avoid the disturbance of certain weak relevant variables as a result of its calculation based on the full spectrum regression. Therefore, DBiPLS exhibited the advantage of removing the weak relevant variables before CARS, and simultaneously improved the prediction performance of CARS.Entities:
Keywords: Agro-products; Competitive adaptive reweighted sampling (CARS); Dynamic backward interval partial least squares (DBiPLS); Monte Carlo uninformative variable elimination (MCUVE); Variable selection
Mesh:
Year: 2020 PMID: 32090279 DOI: 10.1007/s00216-020-02506-x
Source DB: PubMed Journal: Anal Bioanal Chem ISSN: 1618-2642 Impact factor: 4.142