Ensemble pre-processing is emerging as a potential tool to avoid the tiring pre-processing selection and optimization task in near-infrared (NIR) spectral modelling. Furthermore, differently pre-processed data may carry complementary information, hence, ensemble pre-processing may represent the best suited modelling option to extract all the useful information from differently pre-processed data. Recently, multi-block techniques such as sequential (SPORT) and parallel (PORTO) orthogonalized partial least squares regression were proposed to extract complementary information present in differently pre-processed data. Although such multi-block techniques allowed efficient modelling of differently pre-processed data blocks, depending on the app...
Preprocessing is important for near infrared spectroscopy applications as it reduces noise and impro...
Near infrared spectroscopy (NIRS) is an analytical technique for determining the chemical compositio...
Multivariate calibration methods have been applied extensively to the quantitative analysis of Fouri...
Ensemble pre-processing is emerging as a potential tool to avoid the tiring pre-processing selection...
Pre-processing near-infrared spectral data is a major part of near-infrared data modelling. A wide r...
Data generated from spectroscopy may be deformed by artefacts due to a range of physical, chemical a...
Predictive latent space near-infrared (NIR) spectral modelling with PLS (Partial Least Squares) has ...
In spectroscopy, multivariate calibrations more than often include a pre-processing step to reduce t...
The Partial Least Square Regression (PLSR) is a multivariate method commonly used to build a predic...
To calibrate spectral data, one typically starts with preprocessing the spectra and then applies a m...
In multivariate regression analysis of spectroscopy data, spectral preprocessing is often performed ...
We present kernel-based calibration models combined with multivariate feature selection for complex ...
A novel strategy for building and maintaining calibration models has been developed for use when the...
peer reviewedClass-modelling methods aim to predict the conformity of new unknown samples with a sin...
Wavelength selection is an important preprocessing issue in near-infrared (NIR) spectroscopy analysi...
Preprocessing is important for near infrared spectroscopy applications as it reduces noise and impro...
Near infrared spectroscopy (NIRS) is an analytical technique for determining the chemical compositio...
Multivariate calibration methods have been applied extensively to the quantitative analysis of Fouri...
Ensemble pre-processing is emerging as a potential tool to avoid the tiring pre-processing selection...
Pre-processing near-infrared spectral data is a major part of near-infrared data modelling. A wide r...
Data generated from spectroscopy may be deformed by artefacts due to a range of physical, chemical a...
Predictive latent space near-infrared (NIR) spectral modelling with PLS (Partial Least Squares) has ...
In spectroscopy, multivariate calibrations more than often include a pre-processing step to reduce t...
The Partial Least Square Regression (PLSR) is a multivariate method commonly used to build a predic...
To calibrate spectral data, one typically starts with preprocessing the spectra and then applies a m...
In multivariate regression analysis of spectroscopy data, spectral preprocessing is often performed ...
We present kernel-based calibration models combined with multivariate feature selection for complex ...
A novel strategy for building and maintaining calibration models has been developed for use when the...
peer reviewedClass-modelling methods aim to predict the conformity of new unknown samples with a sin...
Wavelength selection is an important preprocessing issue in near-infrared (NIR) spectroscopy analysi...
Preprocessing is important for near infrared spectroscopy applications as it reduces noise and impro...
Near infrared spectroscopy (NIRS) is an analytical technique for determining the chemical compositio...
Multivariate calibration methods have been applied extensively to the quantitative analysis of Fouri...