A strategy that iteratively retains informative variables for selecting optimal variable subset in multivariate calibration.
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Yizeng Liang | Qingsong Xu | Dongsheng Cao | Hong-Dong Li | Hongmei Lu | Yong-Huan Yun | Min-Li Tan | Wei-Ting Wang
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