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径向基神经网络模型在人口老龄化预测中的应用——以湖南省为例
引用本文:陈毅华,李永胜,苏昌贵,孙峰华.径向基神经网络模型在人口老龄化预测中的应用——以湖南省为例[J].经济地理,2012,32(4):32-37.
作者姓名:陈毅华  李永胜  苏昌贵  孙峰华
作者单位:1. 湖南大学经济与贸易学院,中国湖南长沙410079 湖南省民政厅,湖南长沙410003
2. 湖南省民政厅,湖南长沙,410003
3. 湖南省经济地理研究所,中国湖南长沙,410004
4. 鲁东大学环渤海发展研究中心,中国山东烟台,264025
基金项目:湖南省民政厅软科学课题
摘    要:人工神经网络具有良好的非线性映射逼近性能,在各类预测研究中得到了广泛应用。径向基函数神经网络(Radial Basis Function,RBF)因其网络学习速度较快且能避免局部极小值,预测值则更接近于真实值。针对湖南省老龄化突出的现状,以湖南省老龄化指数历史数据为基础,从经济水平、人口自然增长、社会保障三个方面构建湖南省老龄化的影响因子体系,用RBF神经网络方法建立了人口老龄化的定量预测模型。作为对比,同时用多元线性回归方法进行了预测,结果表明RBF神经网络预测模型精度更高,预测结果更加合理可靠。

关 键 词:人口老龄化  RBF神经网络模型  湖南省

Radial Basis Function Neural Network Model Applied in the Forecast of Population Aging Taking Hunan Province as an Example
CHEN Yi-hua,LI Yong-sheng,SU Chang-gui,SUN Feng-hua.Radial Basis Function Neural Network Model Applied in the Forecast of Population Aging Taking Hunan Province as an Example[J].Economic Geography,2012,32(4):32-37.
Authors:CHEN Yi-hua  LI Yong-sheng  SU Chang-gui  SUN Feng-hua
Institution:1.Hunan University,School of Economy & Trade,Changsha 410079,Hunan,China;2.Hunan Civil Administration,Changsha 410003,Hunan,China;3.Hunan Institute of Economic Geography,Changsha 410079,Hunan,China;4.Development Research Center of the Region Encircling the Bohai Sea,Ludong University,Yantai 264025,Shandong,China)
Abstract:Artificial neural network has a good nonlinear mapping approximation performance,and it has been widely applied in all kinds of prediction.Radial Basis Function(RBF) is comparatively fast in network learning speed and able to avoid local minima,so its predictive value is more close to the true one.Aiming at the outstanding of Hunan population aging,based on the aging index historical data,this paper constructed an impact factor system from three aspects such as economic level,the natural population growth and social security.It also constructed a quantitative population aging prediction model by RBF neural network model.In contrast,this paper adopted multiple linear regression method to predict too.The result showed that the RBF neural network model was more accurate and reliable.
Keywords:population aging  RBF neural network model  Hunan province
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