Singh, Manokamna and Domijan, Katarina (2019) Comparison of Machine Learning Models in Food Authentication Studies. In: 2019 30th Irish Signals and Systems Conference (ISSC). IEEE. ISBN 9781728128009
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Abstract
The underlying objective of food authentication
studies is to determine whether unknown food samples have
been correctly labeled. In this paper, we study three near-infrared
(NIR) spectroscopic datasets from food samples of different types:
meat samples (labeled by species), olive oil samples (labeled by
their geographic origin) and honey samples (labeled as pure or
adulterated by different adulterants). We apply and compare a
large number of classification, dimension reduction and variable
selection approaches to these datasets. NIR data pose specific
challenges to classification and variable selection: the datasets are
high - dimensional where the number of cases (n) << number
of features (p) and the recorded features are highly serially
correlated. In this paper, we carry out a comparative analysis of
different approaches and find that partial least squares, a classic
tool employed for these types of data, outperforms all the other
approaches considered.
Item Type: | Book Section |
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Additional Information: | Cite as: M. Singh and K. Domijan, "Comparison of Machine Learning Models in Food Authentication Studies," 2019 30th Irish Signals and Systems Conference (ISSC), 2019, pp. 1-6, doi: 10.1109/ISSC.2019.8904924. |
Keywords: | Principal Component Analysis; PCA; Linear Discriminant Analysis; LDA; Quadratic Discriminant Analysis; QDA; Support Vector Machine; SVM; Marginal Relevance; MR; Feature Selection; Dimension Reduction; Random Forest; RF; Genetic Algorithm; GA; Functional Principal Component Analysis; FPCA; Logit Boost; LB; Bayesian Kernel Projection; Classifier; BKPC; Partial Least Squares; PLS; k-Nearest Neighbours; kNN; |
Academic Unit: | Faculty of Science and Engineering > Mathematics and Statistics Faculty of Science and Engineering > Research Institutes > Hamilton Institute |
Item ID: | 14363 |
Identification Number: | 10.1109/ISSC.2019.8904924 |
Depositing User: | Katarina Domijan |
Date Deposited: | 21 Apr 2021 14:29 |
Publisher: | IEEE |
Refereed: | Yes |
Related URLs: | |
URI: | https://mu.eprints-hosting.org/id/eprint/14363 |
Use Licence: | This item is available under a Creative Commons Attribution Non Commercial Share Alike Licence (CC BY-NC-SA). Details of this licence are available here |
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