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Hauptverfasser: Al-Awadhi, Mokhtar, Deshmukh, Ratnadeep
Format: Preprint
Veröffentlicht: 2025
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2507.22032
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author Al-Awadhi, Mokhtar
Deshmukh, Ratnadeep
author_facet Al-Awadhi, Mokhtar
Deshmukh, Ratnadeep
contents This paper proposes a machine learning-based approach for identifying honey floral and geographical sources using mineral element profiles. The proposed method comprises two steps: preprocessing and classification. The preprocessing phase involves missing-value treatment and data normalization. In the classification phase, we employ various supervised classification models for discriminating between six botanical sources and 13 geographical origins of honey. We test the classifiers' performance on a publicly available honey mineral element dataset. The dataset contains mineral element profiles of honeys from various floral and geographical origins. Results show that mineral element content in honey provides discriminative information useful for classifying honey botanical and geographical sources. Results also show that the Random Forests (RF) classifier obtains the best performance on this dataset, achieving a cross-validation accuracy of 99.30% for classifying honey botanical origins and 98.01% for classifying honey geographical origins.
format Preprint
id arxiv_https___arxiv_org_abs_2507_22032
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Classification of Honey Botanical and Geographical Sources using Mineral Profiles and Machine Learning
Al-Awadhi, Mokhtar
Deshmukh, Ratnadeep
Machine Learning
This paper proposes a machine learning-based approach for identifying honey floral and geographical sources using mineral element profiles. The proposed method comprises two steps: preprocessing and classification. The preprocessing phase involves missing-value treatment and data normalization. In the classification phase, we employ various supervised classification models for discriminating between six botanical sources and 13 geographical origins of honey. We test the classifiers' performance on a publicly available honey mineral element dataset. The dataset contains mineral element profiles of honeys from various floral and geographical origins. Results show that mineral element content in honey provides discriminative information useful for classifying honey botanical and geographical sources. Results also show that the Random Forests (RF) classifier obtains the best performance on this dataset, achieving a cross-validation accuracy of 99.30% for classifying honey botanical origins and 98.01% for classifying honey geographical origins.
title Classification of Honey Botanical and Geographical Sources using Mineral Profiles and Machine Learning
topic Machine Learning
url https://arxiv.org/abs/2507.22032