This paper analyzes the performance of linear regression models taking into account usual criteria such as the number of principal components or latent factors, the goodness of fit or the predictive capability. Other comparison criteria, more common in an economic context, are also considered: the degree of multicollinearity and a decomposition of the mean squared error of the prediction which determines the nature, systematic or random, of the prediction errors. The applications use real data of extra-virgin oil obtained by near-infrared spectroscopy. The high dimensionality of the data is reduced by applying principal component analysis and partial least squares analysis. A possible improvement of these methods by using cluster analysis o...
Partial Least Squares regression (PLS) was used to elaborate the prediction models of the different ...
In this work, a comparative study of two novel algorithms to perform sample selection in local regre...
This work investigates four methods of selecting variates from near-infrared (NIR) spectra for use i...
Over the last decade, near-infrared spectroscopy, together with the use of chemometrics models, has ...
The Partial Least Square Regression (PLSR) is a multivariate method commonly used to build a predic...
This work introduces two novel algorithms for multivariate regression: a partial least squares (PLS)...
To calibrate spectral data, one typically starts with preprocessing the spectra and then applies a m...
To compare their performance on high dimensional data, several regression methods are applied to dat...
With the complexity of Near Infrared (NIR) spectral data, the selection of the optimal number of Par...
Research has been carried out to determine the feasibility of partial least-squares (PLS) regression...
In multivariate regression analysis of spectroscopy data, spectral preprocessing is often performed ...
International audienceThis work investigates the potential of using simultaneously near infrared (NI...
Acesso restrito: Texto completo. p. 185-193.Alternative methods for quality control in the petroleum...
<p>Statistical parameters of the mid infrared spectroscopy-partial least squares regression predicti...
Includes bibliographical references (p. 225-231).Multivariate analysis of spectroscopic data has bec...
Partial Least Squares regression (PLS) was used to elaborate the prediction models of the different ...
In this work, a comparative study of two novel algorithms to perform sample selection in local regre...
This work investigates four methods of selecting variates from near-infrared (NIR) spectra for use i...
Over the last decade, near-infrared spectroscopy, together with the use of chemometrics models, has ...
The Partial Least Square Regression (PLSR) is a multivariate method commonly used to build a predic...
This work introduces two novel algorithms for multivariate regression: a partial least squares (PLS)...
To calibrate spectral data, one typically starts with preprocessing the spectra and then applies a m...
To compare their performance on high dimensional data, several regression methods are applied to dat...
With the complexity of Near Infrared (NIR) spectral data, the selection of the optimal number of Par...
Research has been carried out to determine the feasibility of partial least-squares (PLS) regression...
In multivariate regression analysis of spectroscopy data, spectral preprocessing is often performed ...
International audienceThis work investigates the potential of using simultaneously near infrared (NI...
Acesso restrito: Texto completo. p. 185-193.Alternative methods for quality control in the petroleum...
<p>Statistical parameters of the mid infrared spectroscopy-partial least squares regression predicti...
Includes bibliographical references (p. 225-231).Multivariate analysis of spectroscopic data has bec...
Partial Least Squares regression (PLS) was used to elaborate the prediction models of the different ...
In this work, a comparative study of two novel algorithms to perform sample selection in local regre...
This work investigates four methods of selecting variates from near-infrared (NIR) spectra for use i...