Optimizing precision farming: enhancing machine learning efficiency with robust regression techniques in high-dimensional data
Keywords:
lasso, Ridge, M-estimation, MM-estimation, Robust RegressionAbstract
Smart precision farming leverages IoT, cloud computing, and big data to optimize agricultural productivity, lower costs, and promote sustainability through digitalization and intelligent methodologies. However, it faces challenges such as managing complex variables, addressing multicollinearity, handling outliers, ensuring model robustness, and enhancing accuracy, particularly with small to medium-sized datasets. To overcome these obstacles, reducing retraining time and resolving the complexity issue is essential for improving the machine learning algorithm’s performance, scalability, and efficiency, especially when dealing with large or high-dimensional datasets. In a recent study involving 435 drying parameters and 1,914 observations, two machine learning algorithms - Ridge and Lasso - were employed to analyze and compare the impact of two variable selection techniques, specifically the regularization methods Ridge and Lasso, before and after addressing heterogeneity in highly ranked variables (50, 100, 150, 200, 250, 300). Additionally, robust regression methods such as S, M, MM, M-Hampel, M-Huber, M-Tukey, MM-bisquare, MM-Hampel, and MM-Huber were applied. The results demonstrated that the robust methods, when applied to Ridge and Lasso, achieved the highest efficiency, with the smallest values for MAPE, MSE, SSE, and the highest R2 values, both before and after accounting for heterogeneity. As a result of the study, the best models are the Ridge model with the MM bisquares before heterogeneity, the Ridge model with the MM method after heterogeneity, and the Lasso model with the MM method before heterogeneity and the Lasso model with MM Hampel after heterogeneity.
Published
How to Cite
Issue
Section
Copyright (c) 2024 Nour Hamad Abu Afouna, Majid Khan Majahar Ali

This work is licensed under a Creative Commons Attribution 4.0 International License.
How to Cite
Similar Articles
- Samuel Olorunfemi Adams, Davies Abiodun Obaromi, Alumbugu Auta Irinews, Goodness of Fit Test of an Autocorrelated Time Series Cubic Smoothing Spline Model , Journal of the Nigerian Society of Physical Sciences: Volume 3, Issue 3, August 2021
- A. M. Asere, T. O. Owolabi, B. D. Alafe, O. P. Alabi, M. B. Alimi, Assessment of Excess Gamma Dose Exposure Level in Typical Nigeria Commercial Building Materials Distribution Outlets , Journal of the Nigerian Society of Physical Sciences: Volume 3, Issue 3, August 2021
- P. K. Alimo, G. Lartey-Young, S. Agyeman, T. Y. Akintunde, E. Kyere-Gyeabour, F. Krampah, A. Awomuti, O. Oderinde, A. O. Agbeja, O. G. Afolabi, Spatial distribution and policy implications of the exhaust emissions of two-stroke motorcycle taxis: a case study of southwestern state in Nigeria , Journal of the Nigerian Society of Physical Sciences: Volume 6, Issue 2, May 2024
- K. M. Omatola, A. D. Onojah, R. Larayetan, A. O. Ohiani, I. I. Oshatuyi, M. B. Ochang, O. Anawo, P. Abraham, Isolation and investigation of the structure of silicon quantum dots from rice husk ultrafine silica for possible applications in nanoelectromechanical systems , Journal of the Nigerian Society of Physical Sciences: Volume 7, Issue 4, November 2025
- A. A. Ibiyemi, G. T. Yusuf, O. Akirinola, M. Orojo, B. Osuporu, J. Lawal, Investigating the magnetic domain structure and photonics characters of Singled Phased hard ferromagnetic Ferrite MFe3O4 (M= Co2+, Zn2+, Cd2+) Compounds , Journal of the Nigerian Society of Physical Sciences: Volume 6, Issue 1, February 2024
- C. Otobrise, G. A. Orotomah, Estimation of Critical and Thermophysical Properties of Saturated Cyclic Alkanes by Group Contributions , Journal of the Nigerian Society of Physical Sciences: Volume 4, Issue 3, August 2022
- Raja Aqib Shamim, Majid Khan Majahar Ali, Mohamed Farouk Haashir bin Hamdullah, Computational optimization of auctioneer revenue in modified discrete Dutch auctions with cara risk preferences , Journal of the Nigerian Society of Physical Sciences: Volume 8, Issue 1, February 2026 (In Progress)
- A. F. Adedotun, T. Latunde, O. A. Odusanya, Modelling and Forecasting Climate Time Series with State-Space Model , Journal of the Nigerian Society of Physical Sciences: Volume 2, Issue 3, August 2020
- L. G. Salaudeen, D. GABI, M. Garba, H. U. Suru, Deep convolutional neural network based synthetic minority over sampling technique: a forfending model for fraudulent credit card transactions in financial institution , Journal of the Nigerian Society of Physical Sciences: Volume 6, Issue 2, May 2024
- J. Sunday, G. M. Kumleng, N. M. Kamoh, J. A. Kwanamu, Y. Skwame, O. Sarjiyus, Implicit Four-Point Hybrid Block Integrator for the Simulations of Stiff Models , Journal of the Nigerian Society of Physical Sciences: Volume 4, Issue 2, May 2022
You may also start an advanced similarity search for this article.
Most read articles by the same author(s)
- Lek Ming Lim, Yang Lu, Ahmad Sufril Azlan Mohamed, Majid Khan Majahar Ali, Data safety prediction using YOLOv7+G3HN for traffic roads , Journal of the Nigerian Society of Physical Sciences: Volume 6, Issue 3, August 2024

