基于XGBRegressor算法的机器学习谷物产量预测系统的构建

Zhagparov, Z. Buribayev, S. Joldasbayev, A. Yerkosova, M. Zhassuzak
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引用次数: 9

摘要

使用机器学习来预测作物产量对发展非常重要,因为该解决方案的提出将改善和促进整个农业部门在计算和预测方面的任务,将有助于专注于优化作物生产的基础设施。本文提出了一种基于机器学习的粮食产量自动化预测的解决方案,使用XGBRegressor算法,收集了哈萨克斯坦共和国境内和哈萨克斯坦共和国每个地区的44个参数的数据集。并与线性回归和决策树回归算法进行了比较。验证期为2012年1月1日至2020年9月9日,试验于2020年10月10日进行。因此,与其他算法相比,获得了一个非常准确地预测产量的模型,并且使用RMSE度量来解释结果,以便更准确地了解算法之间的差异和模型造成的误差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Building a System for Predicting the Yield of Grain Crops Based On Machine Learning Using the XGBRegressor Algorithm
The use of machine learning to predict crop yields is important for development, since the proposal of this solution will improve and facilitate the task of the whole department of the agricultural sector in calculations and predictions, will help to focus on optimizing the infrastructure for the production of crops. In this paper, a solution is proposed for automating the forecast of grain yield based on machine learning using the XGBRegressor algorithm with a collected dataset of 44 parameters in the territory of the Republic of Kazakhstan and for each region of the Republic of Kazakhstan separately. Comparisons were made with the Linear Regression and Decision Tree Regressor algorithms. Validation was carried out for the period 01.2012 - 09.2020, the test was carried out at 10.2020. As a result, a model was obtained that predicts the yield quite accurately compared to other algorithms, and the results were interpreted using the RMSE metric to understand the difference more accurately between the algorithms and the errors made by the model.
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