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Increasing Robustness against Changes in the Interferent Structure by Incorporating Prior Information in the Augmented Classical Least-Squares Framework

机译:通过将先验信息纳入增强的古典最小二乘框架,增强对干扰结构变化的鲁棒性

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A class of multivariate calibration methods called augmented classical least squares (ACLS) has been proposed which combines an explicit linear additive model with the predictive power of inverse models, such as principal component regression (PCR) and partial least squares (PLS). Because of its use of the explicit linear additive model, ACLS provides an interesting framework to incorporate different sources of prior information, such as measured pure component spectra, in the model. In this study, the predictive power of ACLS models incorporating different amounts of prior information has been compared to that of PCR and PLS using two examples, a designed experiment and one with biological samples. In both cases, the ACLS models showed predictive power comparable to PLS under idealized validation conditions. When a different interferent structure was present in the validation samples, the predictive power of the inverse models (PCR and PLS) dramatically decreased, with an increase in root-mean-squared error of prediction by a factor of 3.5 for the first example and a factor of 2 in the second example. The incorporation of prior information in the ACLS framework was found to considerably reduce or even completely remove these dramatic effects, especially when the pure component contributions for the interferents were taken into account.
机译:已经提出了一类称为增强古典最小二乘法(ACLS)的多元校准方法,该方法将显式线性加性模型与反模型的预测能力相结合,例如主成分回归(PCR)和偏最小二乘(PLS)。由于使用了显式线性加性模型,ACLS提供了一个有趣的框架,可将模型中的各种先验信息源(例如测得的纯组分光谱)纳入其中。在这项研究中,使用两个实例(一个设计好的实验和一个带有生物样本的实例),将包含不同数量先验信息的ACLS模型的预测能力与PCR和PLS的预测能力进行了比较。在这两种情况下,在理想的验证条件下,ACLS模型均具有与PLS相当的预测能力。当验证样品中存在不同的干扰物结构时,逆模型(PCR和PLS)的预测能力急剧下降,第一个示例的预测均方根误差增加了3.5倍,而在第二个示例中,系数为2。发现在ACLS框架中合并先验信息可以大大减少甚至完全消除这些戏剧性影响,尤其是在考虑到干扰物的纯组分贡献时。

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