基于集成分类器的作物推荐系统

Voshma Reddy Vuyyala, Michael Sadgun Rao Kona, Sai Bhargavi Pusuluri, Swetha Variganji, Bhavani Nenavathu
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摘要

农民面临的问题是,由于恶劣的天气条件和不均匀的降雨,他们无法管理种植。因此,为了减少农民的问题,引入了最新的技术,如机器学习来实现作物推荐系统。使用了广泛的分类技术,并根据其准确性水平选择特定的模型。通过特征选择技术,将原始数据转换为数据集,从而有效地训练具有相关数据的模型。减少冗余数据并仅利用与决定模型最终输出显著相关的方面将提高模型的准确性。研究结果表明,与其他分类器相比,集成方法提供了更好的预测,准确率为99.54%。Document是一个“活的”模板,它已经在样式表中定义了你的论文的组成部分[标题,正文,标题等]。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Crop Recommender System Based on Ensemble Classifiers
Farmers are facing problems because they are unable to manage cultivation because of bad weather conditions and uneven rainfall. Thus, to reduce the problems of farmers, the latest technologies are introduced such as machine learning to implement crop recommendation systems. A wide range of classification techniques are used, and a specific model is selected based on their accuracy levels. By using feature selection techniques, the raw data is converted into a dataset which is useful for efficiently training the model with relevant data. Reducing redundant data and utilizing just the aspects that are significantly relevant in deciding the model’s final output will improve the model’s accuracy. The findings show that, compared to other classifiers, the ensemble approach delivers better prediction with a 99.54% accuracy rate. document is a ‘‘live’’ template and already defines the components of your paper [title, text, heads, etc.] in its style sheet.
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