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首页> 外文期刊>Journal of Chemometrics >A new estimator for the covariance of the PLS coefficients estimator with applications to chemical data
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A new estimator for the covariance of the PLS coefficients estimator with applications to chemical data

机译:具有应用于化学数据的PLS系数估算器的协方差新估算器

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摘要

Partial least squares (PLS) regression is a multivariate technique developed to solve the problem of multicollinearity and high dimensionality in explanatory variables. Several efforts have been made to improve the estimation of the covariance matrix of the PLS coefficients estimator. We propose a new estimator for this covariance matrix and prove its unbiasedness and consistency. We conduct a Monte Carlo simulation study to compare the proposed estimator and one based on the modified jackknife method, showing the advantages of the new estimator in terms of accuracy and computational efficiency. We illustrate the proposed method with three univariate and multivariate real-world chemical data sets. In these illustrations, important findings are discovered because the conclusions of the studies change drastically when using the proposed estimation method in relation to the standard method, implying a change in the decisions to be made by the chemical practitioners.
机译:局部最小二乘(PLS)回归是开发的多变量技术,以解决解释性变量中的多色性和高维度的问题。 已经努力改善PLS系数估计器的协方差矩阵的估计。 我们为此协方差矩阵提出了一种新的估计,并证明了其无偏见和一致性。 我们进行了一个蒙特卡罗模拟研究,以比较所提出的估计和基于改进的杰克方法,在准确性和计算效率方面表明了新估算器的优势。 我们说明了三个单变量和多变量现实世界化学数据集的提出方法。 在这些插图中,发现了重要的发现,因为在使用所提出的估计方法与标准方法相关的估计方法时,研究的结论急剧变化,这意味着化学从业者所做的决定的变化。

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