基于过程神经网络的GDP预测研究

Li Ge, Bo Cui
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引用次数: 4

摘要

对于国内生产总值(GDP)的多元预测,传统预测方法的共同特征难以表达实际预测中的时间累积效应,另一方面,影响GDP的因素具有非常典型的时序特征。因此,从提高GDP预测精度的角度出发,将过程神经网络(PNN)应用到GDP预测中。利用PNN输入函数时变的特点,在预测中充分考虑GDP影响因素的时空累积效应,并在PNN训练中引入惩罚因子来改进BP算法。在此基础上建立了黑龙江省GDP预测模型,并与传统方法进行了对比分析。结果表明,该PNN模型具有较高的精度。
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Research on forecast of GDP based on process neural network
For the multivariate forecast of Gross Domestic Product (GDP), the common features of traditional forecast methods are difficult to express the time cumulative effects in real forecast, and on the other hand, the factors influencing GDP have very typical timing characteristics. Therefore, in consideration of increasing GDP forecast accuracy, process neural network (PNN) was used into the GDP forecast. Making use of the feature of time-varying input function in PNN, the time and space cumulative effect of GDP influence factors was adequately considered into the forecast, and penalty factor was introduced to PNN training to improve BP algorithm. The GDP forecast model of Heilongjiang Province was established based on the above improved algorithm and it was compared and analyzed with the traditional method. The result shows that the PNN model has higher accuracy.
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