Estimating money laundering flows with a gravity model‑based simulation

Publication date

2020-10-29

Authors

Ferwerda, JorasORCID 0000-0002-8834-7935ISNI 000000038893837X
van Saase, A.T.L.ISNI 0000000493349278
Unger, B.ISNI 000000011665535X
Getzner, Michael

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Document Type

Article
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Abstract

It is important to understand the amounts and types of money laundering flows, since they have very different effects and, therefore, need different enforcement strategies. Countries that mainly deal with criminals laundering their proceeds locally, need other measures than countries that mainly deal with foreign illegal investments or dirty money just flowing through the country. This paper has two main contributions. First, we unveil the country preferences of money launderers empirically in a systematic way. Former money laundering estimates used assumptions on which country characteristics money launderers are looking for when deciding where to send their ill‑gotten gains. Thanks to a unique dataset of transactions suspicious of money laundering, provided by the Dutch Institute infobox Criminal and Unexplained Wealth (iCOV), we can empirically test these assumptions with an econometric gravity model estimation. We use this information for our second contribution: iteratively simulating all money laundering flows around the world. This allows us, for the first time, to provide estimates that distinguish between three different policy challenges: the laundering of domestic crime proceeds, international investment of dirty money and money just flowing through a country.

Keywords

A Journal, SDG 10 - Reduced Inequalities, SDG 17 - Partnerships for the Goals

Citation

Ferwerda, J, van Saase, A T L, Unger, B & Getzner, M 2020, 'Estimating money laundering flows with a gravity model‑based simulation', Scientific Reports, vol. 10, 18552 . https://doi.org/10.1038/s41598-020-75653-x