Cluster analysis of tax indicators in Europien countries

T. Merkulova, O. Nikolaeva
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Abstract

Global trends indicate that at the current stage of European countries’ integration, the processes of unification of taxation and tax administration, and the convergence and harmonization of tax systems are taking place. Therefore, for thorough studying of these phenomena, it is important to classify countries according to the parameters of fiscal systems and tax policy. Our analysis of the tax indicators of European countries on the main groups of taxes according to the methodology of ESA 2010 develops the research in this field. The analysis was carried out by clustering methods in order to identify common and different features in the tax systems of European countries. This study covers 30 European countries for the periods 2018 and 2020. This paper focuses on the analysis of three main indicators of tax revenues. According to the ESA 2010 methodology, these are taxes on production and imports (D.2), current taxes on income and property (D.5), and net social contributions (D.61). Cluster analysis of the tax-to-GDP ratio was performed using a hierarchical agglomerative method and the method of k-means using software R Studio and STATISTICA 7.0. As a result, 5 clusters have been obtained. They are characterized by the following average values: 1) the cluster with the lowest total tax-to-GDP ratio, where income taxes predominate; 2) the cluster with the highest total tax-to-GDP ratio, high tax ratio on income and property, and low social contributions; 3) the cluster with an average tax-to-GDP ratio and the largest social contributions; 4) the cluster with an average tax-to-GDP ratio and the predominance of taxes on production and import; 5) countries, where all analyzed tax groups have a roughly equal ratio to GDP. The classification carried out for 2020 data revealed some insignificant changes in the clusters’ composition. These changes can be considered as a result of the tax policy to counteract the effects of the pandemic.
欧洲国家税收指标的聚类分析
全球趋势表明,在欧洲国家一体化的当前阶段,税收和税收管理的统一以及税收制度的趋同和协调的进程正在发生。因此,为了深入研究这些现象,根据财政制度和税收政策的参数对国家进行分类是很重要的。我们根据ESA 2010的方法对欧洲国家主要税种的税收指标进行了分析,从而发展了这一领域的研究。通过聚类方法进行分析,以确定欧洲国家税收制度的共同和不同特征。这项研究涵盖了2018年至2020年期间的30个欧洲国家。本文主要对税收收入的三个主要指标进行分析。根据欧空局2010年的方法,这些税包括生产和进口税(D.2)、收入和财产的现行税(D.5)以及社会净缴款(D.61)。采用R Studio和STATISTICA 7.0软件,采用层次聚类法和k均值法对税收与gdp比率进行聚类分析。结果得到5个集群。它们具有以下平均值:1)总税收与gdp之比最低的集群,其中所得税占主导地位;2)总税收占gdp比重最高、所得财产税比重高、社会贡献率低的集群;3)税收占gdp的平均比率和社会贡献最大的集群;4)税收与gdp之比平均且以生产税和进口税为主的集群;5)国家,所有被分析的税种与GDP的比例大致相等。对2020年数据进行的分类显示,集群的组成发生了一些不显著的变化。这些变化可视为抵消大流行影响的税收政策的结果。
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