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Multi-block chemometric approaches to the unsupervised spectral classification of geological samples

Authors :
Galindo-Prieto, Beatriz
Mudway, Ian S.
Linderholm, Johan
Geladi, Paul
Publication Year :
2024

Abstract

In this paper, the potential use of multi-block chemometric methods to provide improved unsupervised classification of compositionally complex materials through the integration of multi-modal spectrometric data sets (one XRF, two NIR, and two FT-Raman) was tested. We concluded that multi-block HPLS models are effective at combining multi-modal spectrometric data to provide a more comprehensive classification of compositionally complex samples, and VIP can reduce HPLS model complexity, while increasing its data interpretability.<br />Comment: Manuscript (30 pages) and supporting information (30 pages). Submitted to journal

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2409.04466
Document Type :
Working Paper