This thesis aims to tackle some common but challenging issues in 1H NMR spectroscopic studies: investigating differences between some groups of spectra, determining a statistical model for the prediction of a measured quantity or a group membership associated to a spectrum, and identifying the zones of the spectra that carry significant information for the discrimination. Statistically, this requires the study of curves with sharp local features, those features being peaks associated to given resonance frequencies in the spectra, and of which the intensity reflects the concentration of given chemical compounds. A challenge in this problem is to define an efficient measure of the dissimilarity between the spectra. Indeed, a given peak in a d...
peer reviewedThe Bagidis methodology proposes a distance measure between spectra, that takes into ac...
The advancement of theoretical methods in recent years has allowed the calculation of highly accurat...
NMR spectroscopy is increasingly used in combination with multivariate analysis applications. Especi...
This thesis aims to tackle some common but challenging issues in 1H NMR spectroscopic studies: inves...
A functional wavelet-based semi-distance is defined for comparing curves with misaligned sharp local...
With this article, we define, investigate and exploit an efficient measure of the dissimilarity betw...
In this paper, we introduce a functional wavelet based semi-distance for comparing curves with sharp...
Across several branches of sciences, a large number of applications involves data represented as fun...
In chemometrics, spectral data are typically represented by vectors of features in spite of the fact...
In this paper the authors suggest a new method of detection of possible differences between similar ...
Our goal is to predict a scalar value or a group membership from the discretized observation of curv...
When applying statistical data analysis techniques to analytical chemical data, all variables must h...
Nuclear Magnetic Resonance spectroscopy (NMR) is a powerful technique for rapid and efficient quanti...
© The Author(s) 2010. Published in the Journal of Data Science by Data Science Trust.High resolutio...
Nuclear magnetic resonance spectroscopy is a powerful biophysical technique for characterizing biolo...
peer reviewedThe Bagidis methodology proposes a distance measure between spectra, that takes into ac...
The advancement of theoretical methods in recent years has allowed the calculation of highly accurat...
NMR spectroscopy is increasingly used in combination with multivariate analysis applications. Especi...
This thesis aims to tackle some common but challenging issues in 1H NMR spectroscopic studies: inves...
A functional wavelet-based semi-distance is defined for comparing curves with misaligned sharp local...
With this article, we define, investigate and exploit an efficient measure of the dissimilarity betw...
In this paper, we introduce a functional wavelet based semi-distance for comparing curves with sharp...
Across several branches of sciences, a large number of applications involves data represented as fun...
In chemometrics, spectral data are typically represented by vectors of features in spite of the fact...
In this paper the authors suggest a new method of detection of possible differences between similar ...
Our goal is to predict a scalar value or a group membership from the discretized observation of curv...
When applying statistical data analysis techniques to analytical chemical data, all variables must h...
Nuclear Magnetic Resonance spectroscopy (NMR) is a powerful technique for rapid and efficient quanti...
© The Author(s) 2010. Published in the Journal of Data Science by Data Science Trust.High resolutio...
Nuclear magnetic resonance spectroscopy is a powerful biophysical technique for characterizing biolo...
peer reviewedThe Bagidis methodology proposes a distance measure between spectra, that takes into ac...
The advancement of theoretical methods in recent years has allowed the calculation of highly accurat...
NMR spectroscopy is increasingly used in combination with multivariate analysis applications. Especi...