首页> 外文期刊>Analytica chimica acta >COMPARISON OF MULTIVARIATE METHODS BASED ON LATENT VECTORS AND METHODS BASED ON WAVELENGTH SELECTION FOR THE ANALYSIS OF NEAR-INFRARED SPECTROSCOPIC DATA
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COMPARISON OF MULTIVARIATE METHODS BASED ON LATENT VECTORS AND METHODS BASED ON WAVELENGTH SELECTION FOR THE ANALYSIS OF NEAR-INFRARED SPECTROSCOPIC DATA

机译:基于近向量的多种方法与基于波长选择的近红外光谱数据分析方法的比较

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摘要

Comparison of several calibration methods (principal component regression (PCR), partial least-squares, multiple linear regression), with and without feature selection, applied on near-infrared spectroscopic data is presented for a pharmaceutical application. It is shown that PCR with selection of principal components instead of the usual top-down approach yields simpler and better models. As feature selection methods, selection of wavelengths correlated with concentration, with large covariance with concentration, with high loadings on the important principal components, and according to a method proposed by Brown, are considered. The presented results suggests that feature selection can improve multivariate calibration. [References: 13]
机译:介绍了在药物应用中使用和不使用特征选择的几种校准方法(主要成分回归(PCR),偏最小二乘,多元线性回归)的比较。结果表明,选择主要成分而不是通常的自上而下的方法进行PCR可以产生更简单,更好的模型。作为特征选择方法,考虑了与浓度相关的波长的选择,与浓度具有大的协方差,在重要主成分上的高负荷以及根据布朗提出的方法。提出的结果表明,特征选择可以改善多元校准。 [参考:13]

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