越南省级经济增长预测:系统动力学建模方法

Manh Cuong Dong
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引用次数: 0

摘要

预测年经济增长是帮助地方政府制定经济社会发展目标和政策的重要任务。本文提出并发展了越南省级经济增长的预测方法——动态系统模型。它是分析经济增长与相关因素之间动态相互作用的有效方法,有助于预测经济增长。这种方法结合了传统统计学和机器学习,在预测方面有很多优势。具体而言,(1)该方法用于预测面板数据,有助于控制预测对象的时间和空间问题;(2)该预测方法基于多种不同模型的比较和选择;(3)对预报结果进行验证,保证预报结果可靠。本文利用越南统计局2016 - 2020年的数据集,运用动态系统建模方法对越南省级经济增长指标GRDP和人均GRDP进行了预测。分析和预测评价结果表明,动态系统模型是预测越南省级经济增长的有效工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Forecasting economic growth at provincial level in Vietnam: A systematic dynamics modeling approach
Forecasting annual economic growth is an important task to help local governments set goals and policies for socio-economic development. This study proposes and develops the forecasting method for economic growth at the provincial level in Vietnam named Dynamic Systems Modeling. It is an effective method to analyze the dynamic interactions between economic growth and related factors, which is useful for forecasting economic growth. This method is a combination of traditional statistics and machine learning that brings many advantages in forecasting. Specifically, (1) This method is used to forecast panel data, which helps to control both temporal and spatial problems of the forecast object; (2) This forecasting method bases on the comparison and selection of many different models; (3) Forecast results are verified, ensuring reliable forecast results. Through the data set collected from the Vietnam General Statistics Office from 2016 to 2020, we apply the Dynamic Systems Modeling method to forecast two important economic growth indicators at the provincial level, which are GRDP and GRDP per capita. The analysis and forecasting evaluation results show that the Dynamic Systems Modeling is an effective tool for forecasting economic growth at the provincial level in Vietnam.
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