
Crop Recommendation and Yield Production using SVM Algorithm
This research work present a website to employ Machine Learning [ML] algorithms combined with historical weather information to determine the most profitable crop under the current weather …
Implementation of Prediction of Crop Using SVM Algorithm
Machine learning crop prediction is an application of artificial intelligence that enables farmers to make more informed crop management decisions. It involves using historical data on weather …
(PDF) Improved Precision Crop Yield Prediction Using
Apr 14, 2023 · In this work, various machine learning (ML) algorithms are applied to predict the yield of 'rice and sorghum (jowar)' and a novel weighted feature approach with a combination …
This paper proposes an IoT-based system to predict crop yield based on climatic, soil, and biological factors using parallelized granular support vector machines.
Four methods of machine learning are used to predict crop yield: (i) Ridge Regression,(ii)K-nearest Neighbors Regression, (iii) Support Vector Machines Regression and (iv) Gradient …
An Efficient Modeling Based on XGBoost and SVM Algorithms to Predict …
Feb 13, 2022 · In this paper, we made an effort to show the crop production analysis processed by implementing both the algorithms—extreme gradient boosting algorithm (XGBoost) and …
An approach for crop yield prediction using hybrid XGBoost, SVM …
Apr 11, 2024 · Crop yield prediction (CYP) is a problematic issue in the agricultural field. The proposed work constructs a hybridization of the XGBoost-SVM-C4.5 framework to forecast …
Accurate crop yield prediction is essential for enhancing food security and optimizing agricultural management. This study explores the effectiveness of various machine learning (ML) …
Crop Yield Prediction using Granular SVM | ScienceGate
Prediction using granular SVM can be parallelized using appropriate techniques like MapReduce/GPGPU. IoT-based agriculture increases crop yield by accurate prediction, …
Accurate crop prediction is essential to maximize yield and optimize resource usage, ensuring food security and economic stability. This paper presents an advanced model that integrates …