在机器学习中使用回归模型预测作物产量

A. Lakshmanarao, M.Naveen Kumar, K.S.V. Ratnakar, Y. Satwika
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引用次数: 0

摘要

印度的经济严重依赖农业,这份研究报告试图通过预测当地种植的一系列作物的产量来提高农业生产率。这项研究的独特之处在于,它通过使用简单的因素,如地区、地区、季节和州,来预测全年任何选定时间段的农业产量。本文使用现代回归技术,包括Lasso、Kernel Ridge和Elastic-Net回归设计来预测农业生产。堆叠回归的思想也被用来提高设计的性能,并提供更准确的预测。这项研究为印度农业提供了一个积极的突破,有可能为农民和更大的经济带来重大优势。本研究通过采用尖端的分析方法和简单的输入参数,为改进作物产量预测并最终提高全国农业产量提供了有用的工具。农民可以在技术和数据驱动的洞察力的帮助下,做出有关作物种植、施肥和收获的明智决策,从而提高产量和更有利的经济后果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Crop Yield Prediction using Regression Models in Machine Learning
India's economy is heavily dependent on agriculture, and this study report tries to increase agricultural productivity by forecasting crop yields for a range of crops farmed there. This study is unique in that it forecasts agricultural yields for any chosen time period throughout the year by using simple factors like, district, area, season and State. The article forecasts agricultural production using modern regression techniques including Lasso, Kernel Ridge, and Elastic-Net Regression designs. The idea of Stacking Regression is also used to improve the performance of the designs and provide more accurate forecasts. This research provides a positive breakthrough for India's agricultural industry, with the potential to deliver major advantages for farmers and the larger economy. This study provides a useful tool for improving crop yield projections and eventually increasing agricultural output in the nation by employing cutting-edge analytical methodologies and simple input parameters. Informed decisions regarding crop cultivation, fertilization, and harvest may be made by farmers with the help of technology and data-driven insights, resulting in higher yields and more favorable economic consequences.
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