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Application of a sparseness constraint in multivariate curve resolution - Alternating least squares

机译:稀疏约束在多元曲线分辨率中的应用-交替最小二乘

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摘要

The use of sparseness in chemometrics is a concept that has increased in popularity. The advantage is, above all, a better interpretability of the results obtained. In this work, sparseness is implemented as a constraint in multivariate curve resolution - alternating least squares (MCR-ALS), which aims at reproducing raw (mixed) data by a bilinear model of chemically meaningful profiles. In many cases, the mixed raw data analyzed are not sparse by nature, but their decomposition profiles can be, as it is the case in some instrumental responses, such as mass spectra, or in concentration profiles linked to scattered distribution maps of powdered samples in hyperspectral images. To induce sparseness in the constrained profiles, one-dimensional and/or two-dimensional numerical arrays can be fitted using a basis of Gaussian functions with a penalty on the coefficients. In this work, a least squares regression framework with L0-norm penalty is applied. This L0-norm penalty constrains the number of non-null coefficients in the fit of the array constrained without having an a priori on the number and their positions. It has been shown that the sparseness constraint induces the suppression of values linked to uninformative channels and noise in MS spectra and improves the location of scattered compounds in distribution maps, resulting in a better interpretability of the constrained profiles. An additional benefit of the sparseness constraint is a lower ambiguity in the bilinear model, since the major presence of null coefficients in the constrained profiles also helps to limit the solutions for the profiles in the counterpart matrix of the MCR bilinear model. © 2017 Elsevier B.V.
机译:在化学计量学中使用稀疏性是一个越来越流行的概念。最重要的是,优点是可以更好地解释所获得的结果。在这项工作中,稀疏性被实现为多变量曲线分辨率的约束-交替最小二乘(MCR-ALS),其目的是通过具有化学意义的轮廓的双线性模型来再现原始(混合)数据。在许多情况下,所分析的混合原始数据不是稀疏的,但是它们的分解曲线可以是某些仪器响应(例如质谱)中的情况,也可以是与粉末状样品的分散分布图相关联的浓度曲线中的情况。高光谱图像。为了在约束轮廓中引起稀疏,可以使用高斯函数的基础来拟合一维和/或二维数值数组,并对系数进行惩罚。在这项工作中,采用了具有L0-范数罚分的最小二乘回归框架。该L0-范数罚分约束了非零系数的数量,该数量受约束的数组适合,而无需先验数量和位置。已经表明,稀疏约束导致对与非信息通道相关的值的抑制和MS质谱图中的噪声,并改善了分布图中分布化合物的位置,从而更好地解释了受约束的轮廓。稀疏约束的另一个好处是双线性模型中的模糊度较低,因为约束轮廓中主要存在零系数,这也有助于限制MCR双线性模型对应矩阵中轮廓的解。分级为4 +©2017 Elsevier B.V.

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