We investigate here the stability of the obtained results of a variable selection method recently introduced in the literature, and embedded into a modelbased classification framework. It is applied to chemometric data, with the purpose of selecting a few wavenumbers (of the order of tens) among the thousands measured ones, to build a (robust) decision rule for classification. The robust nature of the method safeguards it from potential label noise and outliers, which are particularly dangerous in the field of food-authenticity studies. As a by-product of the learning process, samples are grouped into similar classes, and anomalous samples are also singled out. Our first results show that there is some variability around a common pattern in the obtained selection.

Robust classification of spectroscopic data in agri-food: First analysis on the stability of results / A. Cappozzo, L. Duponchel, F. Greselin, B. Murphy (PROCEEDINGS E REPORT). - In: CLADAG 2021 / [a cura di] G. Porzio, C. Rampichini, C. Bocci. - [s.l] : Firenze University Press, 2021. - ISBN 978-88-5518-340-6. - pp. 49-52 (( Intervento presentato al 13. convegno Scientific Meeting Classification and Data Analysis Group tenutosi a Firenze nel 2021.

Robust classification of spectroscopic data in agri-food: First analysis on the stability of results

A. Cappozzo;
2021

Abstract

We investigate here the stability of the obtained results of a variable selection method recently introduced in the literature, and embedded into a modelbased classification framework. It is applied to chemometric data, with the purpose of selecting a few wavenumbers (of the order of tens) among the thousands measured ones, to build a (robust) decision rule for classification. The robust nature of the method safeguards it from potential label noise and outliers, which are particularly dangerous in the field of food-authenticity studies. As a by-product of the learning process, samples are grouped into similar classes, and anomalous samples are also singled out. Our first results show that there is some variability around a common pattern in the obtained selection.
Variable selection; Robust classification; Label noise; Outlier detection; Near infrared spectroscopy; Mid infrared spectroscopy; Agri-food
Settore SECS-S/01 - Statistica
2021
https://media.fupress.com/files/pdf/24/7254/19407
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2434/1039290
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