Clustering of the European Union member states based on money laundering measuring indices

Ligita Gasparėnienė, Greta Gagytė, Rita Remeikienė, Snieguolė Matulienė
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Abstract

The number of enforcement actions and fines for non-compliance with anti-money laundering (AML) regulations continues climbing year after year, and the year 2021 was no exception to this tendency. Globally, authorities remain harsh, and AML fines in Europe, the United States, and the United Kingdom have been increasing (Global Anti-Money Laundering Regulations, 2021). According to the UN estimations, the amount of money annually laundered worldwide amounts to 2–5% of the world’s Gross Domestic Product (GDP), or in absolute numbers - to 800 billion-2 trillion US dollars. Such high figures indicate that national governments are indeed facing a serious problem of money laundering. In this article, clustering is employed to group the EU member states by their money laundering measuring indices in order to assess the EU legal framework in terms of money laundering prevention. State clustering could help the relevant EU institutions, such as Financial Intelligence Units (FIUs), Europol, International Monetary Fund (IMF), national governments and others, to develop the most effective measures to diminish the problem of money laundering and to complement their regulatory framework. Money laundering is usually associated with criminal activities that generate large amounts of illegal financial resources. In the most general sense, money laundering refers to the process of disguising the true origin, ownership, disposal and movement of particular proceeds, property or property rights. The results of the empirical research propose that money laundering reduction calls for a higher number of suspicious transaction reports (STRs), lower levels of corruption and improvement of the legal framework in terms of money laundering prevention in the EU. The research methods cover comparative and systematic literature analysis, and hierarchical cluster analysis. The cluster analysis of the EU member states (28 countries) uses the number of reports filled with FIU between 2006-2014, the 2012-2020 Basel AML Index and the 1998-2018 CPI data.
基于洗钱衡量指标的欧盟成员国聚类
针对不遵守反洗钱(AML)法规的执法行动和罚款数量逐年攀升,2021年也不例外。在全球范围内,当局仍然严厉,欧洲、美国和英国的“反洗钱”罚款一直在增加(《全球反洗钱条例》,2021年)。据联合国估计,全球每年被洗钱的金额占全球国内生产总值(GDP)的2-5%,绝对量为8000亿-2万亿美元。如此高的数字表明,各国政府确实面临着严重的洗钱问题。本文采用聚类法对欧盟成员国的反洗钱指标进行分组,以评估欧盟在反洗钱方面的法律框架。国家集群可以帮助相关的欧盟机构,如金融情报单位(FIUs)、欧洲刑警组织(Europol)、国际货币基金组织(IMF)、各国政府和其他机构,制定最有效的措施来减少洗钱问题,并补充其监管框架。洗钱通常与产生大量非法金融资源的犯罪活动有关。在最一般的意义上,洗钱是指掩盖特定收益、财产或产权的真实来源、所有权、处置和流动的过程。实证研究结果表明,减少洗钱需要增加可疑交易报告(str)的数量,降低腐败水平,并改善欧盟预防洗钱的法律框架。研究方法包括比较文献分析和系统文献分析,以及层次聚类分析。欧盟成员国(28个国家)的聚类分析使用了2006-2014年期间充满金融情报机构的报告数量、2012-2020年巴塞尔反洗钱指数和1998-2018年CPI数据。
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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