Estimating the magnitude of money laundering in the United Arab Emirates (UAE): evidence from the currency demand approach (CDA)

IF 1.3 Q3 CRIMINOLOGY & PENOLOGY Journal of Money Laundering Control Pub Date : 2023-05-19 DOI:10.1108/jmlc-02-2023-0043
Mariam Aljassmi, Awadh Ahmed Mohammed Gamal, Norasibah Abdul Jalil, J. David, K. Viswanathan
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引用次数: 1

Abstract

Purpose Despite the vulnerability of rapidly developing and emerging market economies, researchers have paid less attention to the determination of the size of money laundering (ML) in these economies, including the United Arab Emirates (the UAE). Therefore, this paper aims to estimate the magnitude of ML in the UAE between 1975 and 2020 based on the currency demand approach (CDA). Design/methodology/approach The study uses the Gregory–Hansen cointegration technique alongside the autoregressive distributed lag bounds testing procedure to estimate the CDA model. Findings The results illustrate that an amount equivalent to about 19.034% of the GDP is laundered in the UAE between 1975 and 2020, on average, with the value lying between 15.129% and 23.121%. In addition, the results demonstrate the importance of the real estate market, gold trade, remittance channels and the size of the underground economy in facilitating the laundering of illicit funds in the country. Originality/value To the best of the authors’ knowledge, the study is the pioneering attempt at estimating the amount of illicit funds laundered in the UAE. Besides, the adoption of a novel, yet robust, approach based on the modification of the CDA technique also sets the study apart as it ensures a correct, clear, unambiguous and indisputable estimate of the magnitude of ML is obtained. In addition, it is expected that the outcome of the study will expand the frontiers of knowledge among policy makers and relevant agencies and ensure the adoption of the most efficient and effective measures to curb the ML menace in the country.
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估计阿拉伯联合酋长国(UAE)的洗钱规模:来自货币需求法(CDA)的证据
尽管快速发展和新兴市场经济体存在脆弱性,但研究人员对这些经济体中洗钱(ML)规模的确定关注较少,包括阿拉伯联合酋长国(UAE)。因此,本文旨在基于货币需求方法(CDA)估计1975年至2020年间阿联酋ML的规模。设计/方法/方法本研究使用Gregory-Hansen协整技术以及自回归分布滞后界检验程序来估计CDA模型。研究结果表明,1975年至2020年期间,阿联酋的洗钱金额平均约占GDP的19.034%,其价值在15.129%至23.121%之间。此外,研究结果还显示了房地产市场、黄金贸易、汇款渠道和地下经济规模在促进该国非法资金洗钱方面的重要性。原创性/价值据作者所知,这项研究是估计阿联酋非法洗钱金额的开创性尝试。此外,采用一种基于CDA技术改进的新颖而稳健的方法也使该研究与众不同,因为它确保了对ML大小的正确,清晰,明确和无可争议的估计。此外,预计研究结果将扩大决策者和相关机构之间的知识前沿,并确保采取最有效和最有效的措施来遏制该国的ML威胁。
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来源期刊
Journal of Money Laundering Control
Journal of Money Laundering Control CRIMINOLOGY & PENOLOGY-
CiteScore
2.70
自引率
27.30%
发文量
59
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