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基于Lasso和BP神经网络的组合预测及其应用——以居民消费支出预测为例
引用本文:喻胜华,张静. 基于Lasso和BP神经网络的组合预测及其应用——以居民消费支出预测为例[J]. 湖南农业大学学报(自然科学版), 2016, 0(1): 123-128
作者姓名:喻胜华  张静
作者单位:(湖南大学 经济与贸易学院,湖南 长沙410079)
摘    要:在变量选择的基础上,构建基于Lasso方法和BP神经网络的预测模型,并对我国城乡居民的消费支出进行预测,结果显示:基于Lasso方法和BP神经网络的组合预测精度要明显高于BP神经网络、Lasso方法的预测精度;在2014~2020年,我国农村居民消费增长率有所提升,城镇居民消费增长率减缓,城乡居民消费增长率之间的差距呈下降趋势,但短期内城乡居民消费差距依然难以缓和。

关 键 词:消费;Lasso方法;BP神经网络;预测

The Study on Prediction of Residents Consumption Expenditure based on Lasso and BP Neural Network
YU Shenghu,ZHANG Jing. The Study on Prediction of Residents Consumption Expenditure based on Lasso and BP Neural Network[J]. Journal of Hunan Agricultural University, 2016, 0(1): 123-128
Authors:YU Shenghu  ZHANG Jing
Affiliation:(School of Economics and Trade, Hunan University,Changsha,Hunan410079,China)
Abstract:On the basis of variable selection, created a multivariate prediction model based on the combination of Lasso method and BP neural network ,and prediction of China''s urban and rural residents consumption expenditure. The prediction results showed that:the combination of Lasso method and BP neural network prediction accuracy is higher than that of the BP neural network,the Lasso method,the results also showed that in 2014-2020 years, the growth rate of rural residents consumption has improved,the consumption of urban residents increased slowly, the gap between urban and rural consumption rate showed a downward trend,but the gap between urban and rural consumption is still difficult to ease in the short term.
Keywords:consumption   Lasso method   BP neural network   prediction
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