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Functional Analysis of Chemometric Data

机译:化学计量数据的功能分析

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摘要

The objective of this paper is to present a review of different calibration and classification methods for functional data in the context of chemometric applications. In chemometric, it is usual to measure certain parameters in terms of a set of spectrometric curves that are observed in a finite set of points (functional data). Although the predictor variable is clearly functional, this problem is usually solved by using multivariate calibration techniques that consider it as a finite set of variables associated with the observed points (wavelengths or times). But these explicative variables are highly correlated and it is therefore more informative to reconstruct first the true functional form of the predictor curves. Although it has been published in several articles related to the implementation of functional data analysis techniques in chemometric, their power to solve real problems is not yet well known. Because of this the extension of multivariate calibration techniques (linear regression, principal component regression and partial least squares) and classification methods (linear discriminant analysis and logistic regression) to the functional domain and some relevant chemometric applications are reviewed in this paper.
机译:本文的目的是介绍化学计量学应用中功能数据的不同校准和分类方法。在化学计量学中,通常根据在一组有限的点(功能数据)中观察到的一组光谱曲线来测量某些参数。尽管预测变量具有明显的功能,但通常可以通过使用多元校准技术来解决此问题,该技术将其视为与观测点(波长或时间)关联的变量的有限集合。但是这些显式变量高度相关,因此首先重构预测曲线的真实函数形式更具参考价值。尽管已在有关化学计量学中功能数据分析技术实施的几篇文章中发表,但它们解决实际问题的能力尚未广为人知。因此,本文综述了多元校准技术(线性回归,主成分回归和偏最小二乘)和分类方法(线性判别分析和逻辑回归)在功能领域的扩展以及一些相关的化学计量学应用。

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