Machine learning model to predict the prices of agricultural products
Publication details: Ghaziabad MAT Journals 2024Edition: Vol.3(1), Jan-AprDescription: 1-5pSubject(s): Online resources: In: Journal of innovations in data science and big data managementSummary: We present an innovative machine learning model designed to forecast agricultural commodity prices, crucial for ensuring sustainable agricultural output. Our approach employs a sophisticated ensemble technique that combines the power of Auto-Regressive Integrated Moving Average (ARIMA) models with other complementary models. In the initial phase, individual ARIMA models are deployed to capture the intricate temporal patterns embedded in historical crop price data. As the project progresses, a dynamic adaptive ensemble framework comes into play, seamlessly integrating additional models to account for subtle variations in the dataset. This adaptive ensemble method is a key highlight, allowing our system to continuously evolve and respond to changing market dynamics effectively. By amalgamating diverse models, our framework significantly enhances prediction accuracy, outperforming standalone ARIMA models. Experimental results underscore the effectiveness of our proposed adaptive ensemble approach...| Item type | Current library | Status | Barcode | |
|---|---|---|---|---|
|  Articles Abstract Database | School of Engineering & Technology Archieval Section | Not for loan | 2025-0349 | 
We present an innovative machine learning model designed to forecast agricultural commodity prices, crucial for ensuring sustainable agricultural output. Our approach employs a sophisticated ensemble technique that combines the power of Auto-Regressive Integrated Moving Average (ARIMA) models with other complementary models. In the initial phase, individual ARIMA models are deployed to capture the intricate temporal patterns embedded in historical crop price data. As the project progresses, a dynamic adaptive ensemble framework comes into play, seamlessly integrating additional models to account for subtle variations in the dataset. This adaptive ensemble method is a key highlight, allowing our system to continuously evolve and respond to changing market dynamics effectively. By amalgamating diverse models, our framework significantly enhances prediction accuracy, outperforming standalone ARIMA models. Experimental results underscore the effectiveness of our proposed adaptive ensemble approach...
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