Crop recommendation with machine learning: leveraging environmental and economic factors for optimal crop selection
Steven Sam, Silima Marshal DAbreo

TL;DR
This study develops and evaluates machine learning models incorporating environmental and economic factors to improve crop recommendations in India, emphasizing temporal dynamics and model accuracy for practical agricultural decision-making.
Contribution
It introduces a novel crop recommendation approach using Lag Variables and temporal validation, enhancing prediction accuracy and real-world applicability over existing models.
Findings
Random Forest with Lag Variables achieved 83.62% accuracy.
Temporal validation reduced overfitting and improved model robustness.
The proposed model offers practical insights for farmers and policymakers.
Abstract
Agriculture constitutes a primary source of food production, economic growth and employment in India, but the sector is confronted with low farm productivity and yields aggravated by increased pressure on natural resources and adverse climate change variability. Efforts involving green revolution, land irrigations, improved seeds and organic farming have yielded suboptimal outcomes. The adoption of computational tools like crop recommendation systems offers a new way to provide insights and help farmers tackle low productivity. However, most agricultural recommendation systems in India focus narrowly on environmental factors and regions, limiting accurate predictions of high-yield, profitable crops. This study uses environmental and economic factors with 19 crops across 15 states to develop and evaluate Random Forest and SVM models using 10-fold Cross Validation, Time-series Split, and…
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Taxonomy
TopicsSmart Agriculture and AI
