数据挖掘技术在农业决策中的应用综述

N. Gandhi, L. Armstrong
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引用次数: 50

摘要

本文综述了数据挖掘技术在农业决策中的应用研究。本文介绍了人工神经网络、贝叶斯网络和支持向量机等数据挖掘技术的应用。这篇综述概述了一些有前途的技术,这些技术已被用于了解各种气候和其他因素对作物生产的关系。这篇综述提出,需要进一步研究如何利用GIS技术将这些技术与复杂的农业数据集结合起来,综合季节和空间因素进行作物产量预测。
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A review of the application of data mining techniques for decision making in agriculture
This paper provides a review of research on the application of data mining techniques for decision making in agriculture. The paper reports the application of a number of data mining techniques including artificial neural networks, Bayesian networks and support vector machines. The review has outlined a number of promising techniques that have been used to understand the relationships of various climate and other factors on crop production. This review proposes that further investigations are needed to understand how these techniques can be used with complex agricultural datasets for crop yield prediction integrating seasonal and spatial factors by using GIS technologies.
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