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基于最小二乘支持向量机的多变量校准

Multivariate calibration with least-squares support vector machines.

作者信息

Thissen Uwe, Ustün Bülent, Melssen Willem J, Buydens Lutgarde M C

机构信息

Laboratory of Analytical Chemistry, University of Nijmegen, Toernooiveld 1, 6525 ED Nijmegen, The Netherlands.

出版信息

Anal Chem. 2004 Jun 1;76(11):3099-105. doi: 10.1021/ac035522m.

Abstract

This paper proposes the use of least-squares support vector machines (LS-SVMs) as a relatively new nonlinear multivariate calibration method, capable of dealing with ill-posed problems. LS-SVMs are an extension of "traditional" SVMs that have been introduced recently in the field of chemistry and chemometrics. The advantages of SVM-based methods over many other methods are that these lead to global models that are often unique, and nonlinear regression can be performed easily as an extension to linear regression. An additional advantage of LS-SVM (compared to SVM) is that model calculation and optimization can be performed relatively fast. As a test case to study the use of LS-SVM, the well-known and important chemical problem is considered in which spectra are affected by nonlinear interferences. As one specific example, a commonly used case is studied in which near-infrared spectra are affected by temperature-induced spectral variation. Using this test case, model optimization, pruning, and model interpretation of the LS-SVM have been demonstrated. Furthermore, excellent performance of the LS-SVM, compared to other approaches, has been presented on the specific example. Therefore, it can be concluded that LS-SVMs can be seen as very promising techniques to solve ill-posed problems. Furthermore, these have been shown to lead to robust models in cases of spectral variations due to nonlinear interferences.

摘要

本文提出将最小二乘支持向量机(LS - SVM)作为一种相对较新的非线性多元校准方法,该方法能够处理不适定问题。LS - SVM是“传统”支持向量机的扩展,最近已被引入化学和化学计量学领域。基于支持向量机的方法相对于许多其他方法的优势在于,这些方法能得到通常唯一的全局模型,并且非线性回归作为线性回归的扩展能够轻松进行。LS - SVM(与支持向量机相比)的另一个优势是模型计算和优化可以相对快速地执行。作为研究LS - SVM应用的一个测试案例,考虑了一个著名且重要的化学问题,即光谱受到非线性干扰的影响。作为一个具体例子,研究了一个常用的案例,其中近红外光谱受到温度引起的光谱变化的影响。利用这个测试案例,展示了LS - SVM的模型优化、剪枝和模型解释。此外,在这个具体例子中,与其他方法相比,LS - SVM表现出了优异的性能。因此,可以得出结论,LS - SVM可被视为解决不适定问题的非常有前景的技术。此外,在由于非线性干扰导致光谱变化的情况下,这些方法已被证明能得到稳健的模型。

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