Abstract

Based on the BP neural network and the ARIMA model, this paper predicts the nonlinear residual of GDP and adds the predicted values of the two models to obtain the final predicted value of the model. First, the focus is on the ARMA model in the univariate time series. However, in real life, forecasts are often affected by many factors, so the following introduces the ARIMAX model in the multivariate time series. In the prediction process, the network structure and various parameters of the neural network are not given in a systematic way, so the operation of the neural network is affected by many factors. Each forecasting method has its scope of application and also has its own weaknesses caused by the characteristics of its own model. Secondly, this paper proposes an effective combination method according to the GDP characteristics and builds an improved algorithm BP neural network price prediction model, the research on the combination of GDP prediction model is currently mostly focused on the weighted form, and this article proposes another combination, namely, error correction. According to the price characteristics, we determine the appropriate number of hidden layer nodes and build a BP neural network price prediction model based on the improved algorithm. Validation of examples shows that the error-corrected GDP forecast model is also better than the weighted GDP forecast model, which shows that error correction is also a better combination of forecasting methods. The forecast results of BP neural network have lower errors and monthly prices. The relative error of prediction is about 2.5%. Through comparison with the prediction results of the ARIMA model, in the daily price prediction, the relative error of the BP neural network prediction is 1.5%, which is lower than the relative error of the ARIMA model of 2%.

Highlights

  • Shaobo LuReceived 23 September 2021; Revised 18 October 2021; Accepted 26 October 2021; Published 12 November 2021

  • GDP refers to the market value of all products and services produced by a country or region in a certain period of time using production factors

  • GDP forecast mainly includes two important aspects, one is the choice of a single model, and the other is the combination of models

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Summary

Shaobo Lu

Received 23 September 2021; Revised 18 October 2021; Accepted 26 October 2021; Published 12 November 2021. In real life, forecasts are often affected by many factors, so the following introduces the ARIMAX model in the multivariate time series. This paper proposes an effective combination method according to the GDP characteristics and builds an improved algorithm BP neural network price prediction model, the research on the combination of GDP prediction model is currently mostly focused on the weighted form, and this article proposes another combination, namely, error correction. According to the price characteristics, we determine the appropriate number of hidden layer nodes and build a BP neural network price prediction model based on the improved algorithm. Rough comparison with the prediction results of the ARIMA model, in the daily price prediction, the relative error of the BP neural network prediction is 1.5%, which is lower than the relative error of the ARIMA model of 2% Validation of examples shows that the error-corrected GDP forecast model is better than the weighted GDP forecast model, which shows that error correction is a better combination of forecasting methods. e forecast results of BP neural network have lower errors and monthly prices. e relative error of prediction is about 2.5%. rough comparison with the prediction results of the ARIMA model, in the daily price prediction, the relative error of the BP neural network prediction is 1.5%, which is lower than the relative error of the ARIMA model of 2%

Introduction
BP neural network spatial architecture
Autoregressive Autoregressive Autoregressive
Results and Analysis
Sample serial
Data interval
Test point
Correlation coefficient
Conclusion
Full Text
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