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Principal component regression that minimizes the sum of the squares of the relative errors: Application in multivariate calibration models

机译:主要成分回归最小化相对错误的平方和:在多变量校准模型中的应用

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Relative errors are typically used in chemometrics to evaluate the performance of a multivariate predictive model. However, these models are not obtained through the criterion of minimizing relative errors, as would be expected in a model whose response is the concentration of an analyte. There are no studies in chemometrics on the use of a principal component regression that minimizes the sum of the squares of the relative errors. This work proposes a model, which serves this purpose. The suggested model, wPCR, has been applied to 7 datasets with 12 predicted responses, 10 of which are multivariate calibrations of analytes in complex mixtures based on instrumental signals coming from various analytical techniques. As PCR and wPCR are methods seeking to optimize different criteria, each one achieves a better performance with respect to its own criterion. Therefore, the new model wPCR leads to better results insofar as the relative errors are considered, especially for the smallest responses. In this sense, the wPCR model also outperforms PCR with logarithmic transformation of the response (logPCR). In addition, as for the performance of the method using Joint Confidence Regions for the intercept and the slope of the accuracy line, it is shown that the application of wPCR does not introduce bias, neither constant nor proportional for the models built, nor a systematic alteration of the achievable accuracy.
机译:相对误差通常用于化学计量学来评估多变量预测模型的性能。然而,这些模型不是通过最小化相对误差的标准获得的,正如在响应为分析物浓度的模型中所预期的那样。在化学计量学中,没有关于使用使相对误差平方和最小化的主成分回归的研究。这项工作提出了一个模型,为这一目的服务。建议的模型wPCR已应用于7个数据集,12个预测响应,其中10个是基于各种分析技术的仪器信号的复杂混合物中分析物的多元校准。由于PCR和wPCR是寻求优化不同标准的方法,因此每一种方法都在各自的标准方面取得了更好的性能。因此,在考虑相对误差的情况下,新模型wPCR可以得到更好的结果,尤其是对于最小的响应。从这个意义上讲,wPCR模型在对数转换反应(logPCR)方面也优于PCR。此外,对于使用截距和精度线斜率的联合置信域的方法的性能,结果表明,wPCR的应用不会引入偏差,对于所建立的模型来说既不是常数也不是比例的,也不会系统地改变可达到的精度。

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