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首页> 外文期刊>Analytical Letters >Near-Infrared Spectroscopy Analytical Model Using Ensemble Partial Least Squares Regression
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Near-Infrared Spectroscopy Analytical Model Using Ensemble Partial Least Squares Regression

机译:近红外光谱分析模型使用集合局部最小二乘回归

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A novel ensemble-based feature selection method was developed which is designated as ensemble partial least squares regression coeffientents (EPRC). It was composed of two steps: generating a series of different single feature selectors and aggregating them to reach a consensus. Specifically, the bootstrap resampling approach was used to generate a diversity of single feature selectors, and the absolute values of the regression coefficients of the partial least squares (PLS) model were used to rank the features. Next, these feature rankings out of single feature selectors were aggregated by the weighted-sum approach. Finally, coupled with the regression model, the features selected by EPRC were evaluated through cross validation and an independent test set. By experiments of constructing the spectroscopy analysis model on three near infrared spectroscopy (NIRS) datasets, it was shown that the EPRC located key wavelengths, gave a promotion to regression performance, and was more stable and interpretable to the domain experts.
机译:开发了一种基于新的基于集合的特征选择方法,其被指定为集合偏最小二乘回归系数(EPRC)。它由两个步骤组成:生成一系列不同的单个特征选择器并汇总它们以达成共识。具体地,用于生成单个特征选择器的多样性的引导重采样方法,并且部分最小二乘(PLS)模型的回归系数的绝对值用于对特征进行排名。接下来,单个特征选择器中的这些特征排名由加权和方法汇总。最后,与回归模型耦合,通过交叉验证和独立的测试集来评估EPRC选择的功能。通过实验,通过构建三个近红外光谱(NIRS)数据集的光谱分析模型,结果表明,EPRC位于键波长,给出了回归性能,并且对域专家更稳定和解释。

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