基于机器学习的作物产量管理预测算法的迂腐分析

M. Chandraprabha, Rajesh Kumar Dhanaraj
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引用次数: 17

摘要

预测分析是一种统计技术,用于从过去的时间顺序数据中预测和调查发展或从数据中提取信息。在数据挖掘中的预测分析、机器学习与物联网(IoT)相结合等新兴技术的帮助下,作物产量方面的主要挑战可以得到解决,并为盈利铺平道路。机器学习是指使系统从以前的经验中学习的过程,这有助于预测。本文对支持向量机(SVM)、递归神经网络(RNN)、K近邻回归(KNN-R)、朴素贝叶斯(Naive Bayes)、贝叶斯网络(BayesNet)、支持向量回归(SVR)等多种预测算法进行了推测性评价,并根据作物产量预测的错误率和准确率水平对其性能进行了描述。BayesNet显示出更高的准确率,约为97.53%,RNN在收获预测中具有更低的错误率,这在其他算法中占主导地位。
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Machine learning based Pedantic Analysis of Predictive Algorithms in Crop Yield Management
Predictive analytics is a statistical technique used to forecast and investigate the development from past chronological data or to extract the information from data. With the help of rising technologies like predictive analytics in data mining, machine learning combining with Internet of Things [IoT], the major challenges in crop yield can be solved and pave way to earn profit. Machine learning means the process of making the system to learn from the previous experiences that help in prediction. In this paper, an conjectural evaluation on diverse prediction algorithms like support vector machines (SVM), recurrent neural networks (RNN), K nearest neighbour regression (KNN-R), Naive Bayes, BayesNet, support vector regression (SVR) etc., is done and its performance are described on the basis of error rates and accuracy level in crop yield. BayesNet shows the higher accuracy of about 97.53% and RNN has less percentage error rates that dominate other algorithms in harvest prediction.
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