基于决策树和随机森林的印度水稻和小麦产量预测

Dr. Sagar B M, Dr. Cauvery N K, Dr.Padmashree T, D. R
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引用次数: 0

摘要

印度经济收入和增长的主要来源之一是农业。考虑到不可预测的环境条件,对农民来说,获得可观的产量往往是一场赌博。本文利用印度不同地区的年作物产量和年降雨量,使用机器学习算法来预测水稻和小麦的产量。本文利用决策树和随机森林等算法建立了一种流行的预测模型,用于预测印度最广泛种植的作物如水稻和小麦的产量。使用的特征是生产区域,降雨量,季节和州。季节和州是一个热门的编码特征。采用均方误差测量损失。该数据集是通过结合各州的作物产量和各州的降雨量数据集来编制的。索引术语:机器学习,XGBoost,决策树,随机森林,数据预处理,数据可视化,预测
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Rice and Wheat Yield Prediction in India Using Decision Tree and Random Forest
One of the main sources of revenue and growth in Indian economy is from agriculture. It is often a gamble for the farmers to obtain a decent yield, considering the unpredictable environmental conditions. This paper deals with the prediction of the yield of rice and wheat using machine learning algorithms using the annual crop yield production and the annual rainfall in the different districts of India. In this paper, a popular prediction model is developed using algorithms such as decision tree and random forest to predict the yield of most widely grown crops in India like rice and wheat. The features used were the area of production, rainfall, season and state. The season and the state were one hot encoded features. Mean square error was used to measure the loss. The dataset was prepared by combining the crop production in the various states and the rainfall dataset in the respective states. Index Terms : Machine Learning, XGBoost, Decision Tree, Random Forest, Data Preprocessing, Data Visualization, Prediction
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