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2024 | OriginalPaper | Buchkapitel

Advancing Crop Recommendation Systems Through Ensemble Learning Techniques

verfasst von : M’hamed Mancer, Labib Sadek Terrissa, Soheyb Ayad, Hamed Laouz, Noureddine Zerhouni

Erschienen in: Innovations in Smart Cities Applications Volume 7

Verlag: Springer Nature Switzerland

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Abstract

In order to assist farmers in selecting the most suitable crops based on environmental characteristics, this article introduces a novel system for crop recommendation that leverages machine learning techniques, specifically ensemble learning with a voting classifier. A comprehensive analysis of prior research in the field of crop recommendation systems reveals the limitations and challenges of previous approaches, particularly their low accuracy. To address these shortcomings, the proposed system incorporates a voting classifier that amalgamates the performance of various machine learning models, while taking into account the perspectives of all participating models. By harnessing the collective intelligence of these models, this approach aims to mitigate the limitations of previous methods and provide more dependable and precise crop recommendations. The results demonstrate the system’s capacity to generate highly accurate recommendations, with the ensemble learning approach achieving an accuracy rate of 99.31%. This empowers farmers to optimize their agricultural practices and maximize crop yields, enabling them to make informed decisions for sustainable and efficient farming.

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Metadaten
Titel
Advancing Crop Recommendation Systems Through Ensemble Learning Techniques
verfasst von
M’hamed Mancer
Labib Sadek Terrissa
Soheyb Ayad
Hamed Laouz
Noureddine Zerhouni
Copyright-Jahr
2024
DOI
https://doi.org/10.1007/978-3-031-54376-0_4

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