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Using the L-1 norm to select basis set vectors for multivariate calibration and calibration updating

机译:使用L-1范数选择基集向量以进行多元校准和校准更新

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With projection based calibration approaches, such as partial least squares (PLS) and principal component regression (PCR), the calibration space is spanned by respective basis vectors (latent vectors). Up to rank k basis vectors are formed where kmin(m,n) with m and n denoting the number of calibration samples and measured variables. The user needs to decide how many and which respective basis vectors (tuning parameters). To avoid the second issue, basis vectors are selected top-down starting with the first and sequentially adding until model criteria are satisfied. Ridge regression (RR) avoids the issues by using the full set of basis vectors. Another approach is to select a subset from the total available. The presented work develops a process based on the L-1 vector norm to select basis vectors. Specifically, the L-1 norm is used to select singular value decomposition (SVD) basis set vectors for PCR (LPCR). Because PCR, PLS, RR, and others can be expressed as linear combination of the SVD basis vectors, the focus is on selection and comparison using the SVD basis set. Results based on respective tuning parameter selections and weights applied to the SVD basis vectors for LPCR, top-down PCR, correlation PCR (CPCR), PLS, and RR are compared for calibration and calibration updating using spectroscopic data sets. The methods are found to predict equivalently. In particular, the L-1 norm produces similar results to those obtained by the well-studied CPCR process. Thus, the new method provides a different theoretical framework than CPCR for selecting basis vectors. Copyright (c) 2016 John Wiley & Sons, Ltd.
机译:使用基于投影的校准方法,例如偏最小二乘(PLS)和主成分回归(PCR),校准空间将被各个基本矢量(潜矢量)覆盖。形成多达k个基本向量,其中kmin(m,n),其中m和n表示校准样本和测量变量的数量。用户需要决定多少个基本矢量以及哪些基本矢量(调整参数)。为避免出现第二个问题,从第一个开始自上而下选择基向量,然后依次添加直到满足模型标准。 Ridge回归(RR)通过使用全套基础向量避免了这些问题。另一种方法是从可用总数中选择一个子集。提出的工作开发了一种基于L-1向量范数来选择基本向量的过程。具体而言,L-1范数用于选择用于PCR(LPCR)的奇异值分解(SVD)基集向量。因为PCR,PLS,RR等可以表示为SVD基础向量的线性组合,所以重点是使用SVD基础集进行选择和比较。比较基于相应调整参数选择和应用于LPCR,自上而下PCR,相关PCR(CPCR),PLS和RR的SVD基础向量的权重的结果,以使用光谱数据集进行校准和校准更新。发现这些方法可以等效地进行预测。特别是,L-1规范产生的结果与经过充分研究的CPCR过程获得的结果相似。因此,该新方法为选择基础载体提供了不同于CPCR的理论框架。版权所有(c)2016 John Wiley&Sons,Ltd.

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