经济建模中的机器学习

IF 0.8 Q3 INFORMATION SCIENCE & LIBRARY SCIENCE International Journal of Public Administration in the Digital Age Pub Date : 2021-01-01 DOI:10.4018/ijpada.294120
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引用次数: 0

摘要

预算规划和政府决策需要对公共支出进行准确估计。机器学习的最新进展为这类问题的建模提供了机会。本文介绍了一种新的建模方法,使用机器学习工具来预测公共支出,并将这种方法与传统建模方法的有效性进行比较和对比。这项研究使用1960-2016年的历史季度数据来模拟公共支出。各种精度测量(MAD, MAPE和RSME)表明,机器学习模型是最佳的替代配方,并提供97%的预测精度。该模型允许政府决策者评估具有具体预算影响的备选政策。此外,研究还表明,人口老龄化是公共支出的重要预测因子;这表明人口监测对于南非有效的财政规划和管理是必不可少的。
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Machine Learning for Economic Modeling
Accurate estimate of public expenditures is needed for budgetary planning and government decision making. Recent advances in machine learning offers the opportunity for modeling such problems. The paper introduces a novel modeling approach using a machine learning tool to forecast public expenditures and compare and contrast the effectiveness of this approach to traditional modeling alternatives. This research uses historical quarterly data from 1960-2016 to model public expenditures. Various accuracy measures (MAD, MAPE, and RSME) show that the machine learning model is the best alternative formulation and offers 97% forecasting accuracy. This model allows government decision makers to assess alternative policies with specific budgetary impacts. Furthermore, the study also shows that population aging is an important predictor of public expenditures; suggesting that demographic monitoring is indispensable for efficient fiscal planning and management in South Africa.
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CiteScore
2.20
自引率
0.00%
发文量
5
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