Design and Application of Macro Economic Intelligent Prediction Decision Support System Based on Agent System
Published Online: Jun 05, 2025
Received: Jan 16, 2025
Accepted: May 11, 2025
DOI: https://doi.org/10.2478/amns-2025-1040
Keywords
© 2025 Lijun Ma and Jiayi Li, published by Sciendo.
This work is licensed under the Creative Commons Attribution 4.0 International License.
This paper closely combines Agent system and macroeconomic forecasting, and proposes an Agent-based decision support system for macroeconomic intelligent forecasting, which provides a strong support for decision making in macroeconomic forecasting. The mathematical model used in the system of this paper is mixed-frequency vector autoregressive model MF-VAR, and Kalman smoothing operator is used in the commonly used low-frequency quarterly variable and high-frequency monthly variable MF-VAR model for macroeconomic indicator forecasting. On the basis of MF-VAR model, dynamic factor model, Bayesian method estimation are introduced respectively, and MF-VAR model combining factor model and BMF-VAR model are further proposed. In the simulation experiments to test the comprehensive validity, the reliability of this paper’s system is always higher than the 98% level, the response time is short, and the decision support error rate is always lower than 1.2%, which is better than the other systems in the comparison. The system in this paper is applied to macroeconomic forecasting and short-term prediction before and after the Xin Guan epidemic in China. Before the epidemic, the MF-VAR model combined with the factor model can improve the accuracy of forecasting to a certain extent when it is not affected by major events. And after the epidemic and when the economy suffers from major shocks, the MF-VAR model combined with the factor model and the BMF-VAR model face a decrease in the forecasting accuracy of the indicators such as the export volume and the import volume, but the disadvantage is not obvious.