The recent development of more sophisticated spectroscopic methods allows acquisition of high dimensional datasets from which valuable information may be extracted using multivariate statistical analyses, such as dimensionality reduction and automatic classification (supervised and unsupervised). In this work, a supervised classification through a partial least squares discriminant analysis (PLS-DA) is performed on the hy- perspectral data. The obtained results are compared with those obtained by the most commonly used classification approaches.

Partial least squares discriminant analysis: A dimensionality reduction method to classify hyperspectral data / Fordellone, Mario; Andrea, Bellincontro; Fabio, Mencarelli. - In: STATISTICA APPLICATA. - ISSN 1125-1964. - (2018), pp. 1-24.

Partial least squares discriminant analysis: A dimensionality reduction method to classify hyperspectral data

FORDELLONE, MARIO
;
2018

Abstract

The recent development of more sophisticated spectroscopic methods allows acquisition of high dimensional datasets from which valuable information may be extracted using multivariate statistical analyses, such as dimensionality reduction and automatic classification (supervised and unsupervised). In this work, a supervised classification through a partial least squares discriminant analysis (PLS-DA) is performed on the hy- perspectral data. The obtained results are compared with those obtained by the most commonly used classification approaches.
2018
PLS-DA; discriminant analysis; hyperspectral data
01 Pubblicazione su rivista::01g Articolo di rassegna (Review)
Partial least squares discriminant analysis: A dimensionality reduction method to classify hyperspectral data / Fordellone, Mario; Andrea, Bellincontro; Fabio, Mencarelli. - In: STATISTICA APPLICATA. - ISSN 1125-1964. - (2018), pp. 1-24.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1173122
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