An experimental analysis of machine learning techniques for crop recommendation

Saritha Vemulapalli, M. S. Sri, P. Varshitha, P. P. Kumar, T. Vinay
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引用次数: 0

Abstract

Taking a country into consideration where agriculture remains the primary occupation and farming still happens using conventional methods, the farmers are not able to produce anticipated yields. Modern farming strategies called precision farming play a vital role in improving crop yield and generating more profit for the farmers. This includes recommendations of crops that are suitable for specific fields based on soil conditions, temperature, rainfall, and humidity. To solve this problem, crop recommendation systems play an important role. In this research work, a crop recommendation system (CRS) was implemented using various machine learning algorithms that include random forest, decision trees, extreme gradient boosting (XG boost), and K-nearest neighbors (KNN). Experimental analysis was performed on the dataset collected from Kaggle. The Random Forest algorithm outperforms XG Boost, Decision Tree, and KNN with high accuracy and F1 score of 99.3% and 99.01% respectively. Hyperparameter tuning is additionally performed on XG Boost and Random Forest algorithms to improve accuracy. After hyperparameter tuning, the Random Forest algorithm outperforms XG Boost with an accuracy of 99.5%. 
用于作物推荐的机器学习技术实验分析
在一个以农业为主要职业的国家,耕作仍采用传统方法,农民无法获得预期产量。被称为精准农业的现代农业战略在提高作物产量和为农民创造更多利润方面发挥着至关重要的作用。这包括根据土壤条件、温度、降雨量和湿度推荐适合特定田地的作物。为解决这一问题,作物推荐系统发挥了重要作用。在这项研究工作中,使用了多种机器学习算法,包括随机森林、决策树、极梯度提升(XG boost)和 K-nearest neighbors(KNN),实现了作物推荐系统(CRS)。实验分析是在从 Kaggle 收集的数据集上进行的。随机森林算法的准确率和 F1 分数分别高达 99.3% 和 99.01%,优于 XG Boost、决策树和 KNN 算法。此外,还对 XG Boost 和随机森林算法进行了超参数调整,以提高准确率。经过超参数调整后,随机森林算法的准确率超过了 XG Boost,达到 99.5%。
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来源期刊
CiteScore
0.10
自引率
0.00%
发文量
126
审稿时长
11 weeks
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