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模糊聚类分析在农业经济中的应用及编程处理方法 被引量:2

The Application of Fuzzy Cluster Analysis in Agricultura Economy and Its Programming
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摘要 模糊数学在实际中的应用几乎涉及到国民经济的各个领域及部门.因此模糊聚类方法是通常采用的方法,本篇文章主要突出了两个问题(1)对有限论域上的模糊聚类分析用已编写的程序进行处理.它不需掌握聚类分析方法,只要采集到原始数据,运行程序后,按提示输入数据,选择不同的算法,直接就可以得到模糊聚类分析的结果,其次解决了模糊聚类分析时的大量计算问题.(2)作为程序的应用,用模糊聚类分析的方法对承德市八县三区农业经济状况运行程序自动进行聚类分析.为了按模糊聚类分析的步骤分析问题,我们分步骤进行(程序的功能可分步进行也可直接得到分析结果). The application in reality of fuzzy mathematics nearly involves each field and department of nationaleconomy,so the fuzzy cluster method is usually adopted.This article has stressed two questions mainly:(1)It deals with the procedure that has already written,talking about the fuzzy cluster analysis on theland limitedly.It does not need to grasp the analytical method of the cluster.After gathering initial data,and running the procedure,according to the data-in pointing out,we can choose different algorithms,thenthe result of fuzzy cluster analysis can be gained directly.As a result,a large amount of calculating problemsin fuzzy cluster analysis can be solved.(2)As the application of the programme,it gives a cluster analysison the agricultural economy of the tight counties and three districts of chengde City.In order to analyzethe problem according to the procedure of the fuzzy cluster analysis,we go on step sy step the functionof the procedure either can go on step by step or can get the result of the analysis directly.
作者 杨海岳
出处 《河北建筑工程学院学报》 CAS 2004年第3期103-106,122,共5页 Journal of Hebei Institute of Architecture and Civil Engineering
关键词 农业经济 支行 部门 国民经济 模糊聚类分析 程序 步骤 计算问题 分析问题 实际 fuzzy cluster analysis standardization of the data demarcating cluster
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参考文献1

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同被引文献18

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