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The Combination Forecasting Model of Grain Production Based on Stepwise Regression Method and RBF Neural Network

机译:基于逐步回归法和RBF神经网络的粮食产量组合预测模型。

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摘要

In order to improve the accuracy of grain production forecasting, this study proposed a new combination forecasting model, the model combined stepwise regression method with RBF neural network by assigning proper weights using inverse variance method. By comparing different criteria, the result indicates that the combination forecasting model is superior to other models. The performance of the models is measured using three types of error measurement, which are Mean Absolute Percentage Error (MAPE), Theil Inequality Coefficient (Theil IC) and Root Mean Squared Error (RMSE). The model with smallest value of MAPE, Theil IC and RMSE stands out to be the best model in predicting the grain production. Based on the MAPE, Theil IC and RMSE evaluation criteria, the combination model can reduce the forecasting error and has high prediction accuracy in grain production forecasting, making the decision more scientific and rational.
机译:为了提高粮食产量预测的准确性,本研究提出了一种新的组合预测模型,该模型通过使用逆方差法分配适当的权重,将逐步回归方法与RBF神经网络相结合。通过比较不同的标准,结果表明组合预测模型优于其他模型。使用三种类型的误差测量来测量模型的性能,即平均绝对百分比误差(MAPE),Theil不等式系数(Theil IC)和均方根误差(RMSE)。在预测谷物产量方面,MAPE,Theil IC和RMSE值最小的模型是最佳模型。该组合模型基于MAPE,Theil IC和RMSE评估标准,可以减少预测误差,在粮食产量预测中具有较高的预测精度,决策更加科学合理。

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