Title of article
Support vector regression for functional data in multivariate calibration problems Original Research Article
Author/Authors
Noslen Hern?ndez، نويسنده , , Isneri Talavera Bustamante، نويسنده , , Rolando J. Biscay، نويسنده , , Diana Porro، نويسنده , , Marcia M.C. Ferreira، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2009
Pages
7
From page
110
To page
116
Abstract
Quantitative analyses involving instrumental signals, such as chromatograms, NIR, and MIR spectra have been successfully applied nowadays for the solution of important chemical tasks. Multivariate calibration is very useful for such purposes and the commonly used methods in chemometrics consider each sample spectrum as a sequence of discrete data points. An alternative way to analyze spectral data is to consider each sample as a function, in which a functional data is obtained. Concerning regression, some linear and nonparametric regression methods have been generalized to functional data. This paper proposes the use of the recently introduced method, support vector regression for functional data (FDA-SVR) for the solution of linear and nonlinear multivariate calibration problems. Three different spectral datasets were analyzed and a comparative study was carried out to test its performance with respect to some traditional calibration methods used in chemometrics such as PLS, SVR and LS-SVR. The satisfactory results obtained with FDA-SVR suggest that it can be an effective and promising tool for multivariate calibration tasks.
Keywords
Circular dichroism spectroscopy , Clustering , Principal component analysis , DNA structure , classification , Partial least squares discriminant analysis
Journal title
Analytica Chimica Acta
Serial Year
2009
Journal title
Analytica Chimica Acta
Record number
1037301
Link To Document