Factors Fostering Shadow Economy Performance in Poland and Lithuania during 2000-2019

IF 2.5 3区 经济学 Q2 ECONOMICS
A. Buszko
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引用次数: 4

Abstract

This study relies on a calculable and essential analysis of a statistically oriented regression model. Ninety-five variables taken into consideration in this research were grouped into four categories. The first category covers the general macroeconomic situation, the second is devoted to crime, the third is formed by characteristics of income and living conditions, and the fourth one applies to the taxation system. The Multiple Indicators Multiple Causes (MIMIC) model was employed to measure the level of shadow economy in Poland and in Lithuania during 2000-2019. The MIMIC model depends on Structural Equation Models. The MIMIC approach allows one to assess shadow economy as a latent variable. The observed factors are government employment/labor force, tax burden, subsides/GDP, social benefits paid by government/GDP, self-employment/GDP, and unemployment rate.  The Pearson correlation index was used to size up the correlation between independent variables, and Kolmogorov–Smirnov (KS) test for normality of residuals was applied. In both countries, factors affecting the shadow economy performance show great similarity. The shadow economy development in Poland and in Lithuania is fostered by many different factors, related to, but not limited to, the general macroeconomic situation. In fact, the economic situation is associated with the standard of living, income as well as the crime rate. Important factors are associated with the taxation system. The results demonstrate that the regression model can be used to predict the shadow economy development and performance in Poland and in Lithuania. Such information facilitates taking adequate steps in order to minimize the shadow economy level in both countries. Such implications are very useful for decision makers in shaping the legal and economic progress in both countries.
2000-2019年促进波兰和立陶宛影子经济绩效的因素
本研究依赖于统计导向回归模型的可计算性和本质分析。在这项研究中考虑的95个变量被分为四类。第一类是宏观经济总体情况,第二类是犯罪,第三类是收入和生活条件特征形成的,第四类是税收制度。采用多指标多原因(MIMIC)模型来衡量2000-2019年波兰和立陶宛的影子经济水平。MIMIC模型依赖于结构方程模型。MIMIC方法允许人们将影子经济作为一个潜在变量进行评估。观察到的因素有政府就业/劳动力、税收负担、补贴/GDP、政府支付的社会福利/GDP、自营职业/GDP、失业率。采用Pearson相关指数衡量自变量之间的相关性,残差正态性采用Kolmogorov-Smirnov (KS)检验。在两国,影响影子经济运行的因素表现出很大的相似性。波兰和立陶宛影子经济的发展受到许多不同因素的推动,这些因素与宏观经济形势有关,但不限于宏观经济形势。事实上,经济状况与生活水平、收入以及犯罪率有关。重要的因素与税收制度有关。结果表明,该回归模型可用于预测波兰和立陶宛影子经济的发展和绩效。这些信息有助于采取适当措施,尽量减少两国的影子经济水平。这种影响对决策者在塑造两国的法律和经济进步方面非常有用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
5.20
自引率
3.60%
发文量
32
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