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Weighted partial least squares regression by variable grouping strategy for multivariate calibration of near infrared spectra

机译:变量分组策略的加权偏最小二乘回归用于近红外光谱的多元校正

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摘要

A weighted partial least squares (PLS) regression method for multivariate calibration of near infrared (NIR) spectra is proposed. In the method, the spectra are split into groups of variables according to the statistic values of variables, i.e., the stability, which has been used to evaluate the importance of variables in a calibration model. Because the stability reflects the relative importance of the variables for modeling, these groups present different spectral information for construction of PLS models. Therefore, if a weight which is proportional to the stability is assigned to each sub-model built with different group variables, a combined model can be built by a weighted combination of the sub-models. This method is different from the commonly used variable selection strategies, making full use of the variables according to their importance, instead of only the important ones. To validate the performance of the proposed method, it was applied to two different NIR spectral data sets. Results show that the proposed method can effectively utilize all variables in the spectra and enhance the prediction ability of the PLS model.
机译:提出了一种用于偏红外光谱多元校正的加权偏最小二乘(PLS)回归方法。在该方法中,根据变量的统计值(即稳定性)将光谱分为变量组,该统计值已用于评估校准模型中变量的重要性。因为稳定性反映了建模变量的相对重要性,所以这些组为构建PLS模型提供了不同的光谱信息。因此,如果将与稳定性成比例的权重分配给使用不同组变量构建的每个子模型,则可以通过子模型的加权组合来构建组合模型。这种方法不同于常用的变量选择策略,它根据变量的重要性充分利用变量,而不仅仅是重要变量。为了验证所提出方法的性能,将其应用于两个不同的近红外光谱数据集。结果表明,该方法可以有效利用光谱中的所有变量,增强了PLS模型的预测能力。

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