Modelling the Non-Linear Dependencies between Government Expenditures and Shadow Economy Using Data-Driven Approaches

Codrut-Florin Ivascu, Sorina Emanuela Ștefoni
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Abstract

This article aims to model the relationship between the size of the shadow economy and the most important government expenditures respectively social protection, health, and education, using nonlinear approaches. We applied four different Machine Learning models, namely Support Vector Regression, Neural Networks, Random Forest, and XGBoost on a cross-sectional dataset of 28 EU states between 1995 and 2020. Our goal is to calibrate an algorithm that can explain the variance of shadow economy size better than a linear model. Moreover, the most performant model has been used to predict the shadow economy size for over 30,000 simulated combinations of expenses in order to outline some possible inflection points after which government expenditures become counterproductive. Our findings suggest that ML algorithms outperform linear regression in terms of R-squared and root mean squared error and that social protection spending is the most important determinant of shadow economy size.  Further to our analysis for the 28 EU states, between 1995 and 2020, the results suggest that the lowest size of shadow economy occurs when social protection expenses are greater than 20% of GDP, health expenses are greater than 6% of GDP, and education expenses range between 6% and 8% of GDP. To the best of the authors' knowledge, this is the first paper that used ML to model shadow economy and its determinants (i.e., government expenditures). We propose an easy-to-replicate methodology that can be developed in future research.
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使用数据驱动方法建模政府支出与影子经济之间的非线性相关性
本文旨在利用非线性方法建立影子经济规模与最重要的政府支出(分别是社会保护、卫生和教育)之间的关系模型。我们在1995年至2020年间对28个欧盟国家的横截面数据集应用了四种不同的机器学习模型,即支持向量回归、神经网络、随机森林和XGBoost。我们的目标是校准一种算法,它可以比线性模型更好地解释影子经济规模的变化。此外,最有效的模型已被用于预测超过30,000种模拟支出组合的影子经济规模,以概述政府支出产生反效果的一些可能拐点。我们的研究结果表明,机器学习算法在r平方和均方根误差方面优于线性回归,社会保护支出是影子经济规模的最重要决定因素。我们对欧盟28个国家在1995年至2020年间的进一步分析表明,影子经济规模最小的时候,社会保障支出大于GDP的20%,医疗支出大于GDP的6%,教育支出在GDP的6%至8%之间。据作者所知,这是第一篇使用ML来模拟影子经济及其决定因素(即政府支出)的论文。我们提出了一种易于复制的方法,可以在未来的研究中发展。
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来源期刊
CiteScore
1.40
自引率
0.00%
发文量
23
审稿时长
10 weeks
期刊介绍: The Journal called Scientific Annals of Economics and Business (formerly Analele ştiinţifice ale Universităţii "Al.I. Cuza" din Iaşi. Ştiinţe economice / Scientific Annals of the Alexandru Ioan Cuza University of Iasi. Economic Sciences), was first published in 1954. It is published under the care of the Alexandru Ioan Cuza University, the oldest higher education institution in Romania, a place of excellence and innovation in education and research since 1860. Throughout its editorial life, the journal has been continuously improving. Renowned professors, well-known in the country and abroad, have published in this journal. The quality of the published materials is ensured both through their review by external reviewers of the institution and by the editorial staff that includes professors for each area of interest. The journal published papers in the following main sections: Accounting; Finance, Money and Banking; Management, Marketing and Communication; Microeconomics and Macroeconomics; Statistics and Econometrics; The Society of Knowledge and Business Information Systems.
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