The effect of anti-money laundering policies: an empirical network analysis

Publication date

2022-12

Authors

Gerbrands, PeterORCID 0000-0002-1205-823XISNI 0000000506582002
Unger, BrigitteISNI 000000011665535X
Getzner, Michael
Ferwerda, JorasORCID 0000-0002-8834-7935ISNI 000000038893837X

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Advisors

Supervisors

Document Type

Article
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License

cc_by

Abstract

Aim: There is a growing literature analyzing money laundering and the policies to fight it, but the overall effectiveness of anti-money laundering policies is still unclear. This paper investigates whether anti-money laundering policies affect the behavior of money launderers and their networks. Method: With an algorithm to match clusters over time, we build a unique dataset of multi-mode, undirected, binary, dynamic networks of natural and legal persons. The data includes ownership and employment relations and associated financial ties and is enriched with criminal records and police-related activities. The networks of money launderers, other criminals, and non-criminal individuals are analyzed and compared with temporal social network analysis techniques and panel data regressions on centrality measures, transitivity and assortativity indicators, and levels of constraint. Findings: We find that after the announcement of the fourth EU anti-money laundering directive in 2015, money laundering networks show a significant increase in the use of foreigners and corporate structures. At the individual level, money launderers become more dominant in criminal clusters (increased closeness centrality). This paper shows that (the announcement of) anti-money laundering policies can affect criminal networks and how such effects can be tested.

Keywords

Dynamic cluster detection, Money laundering, Policy evaluation, Social network analysis, Modelling and Simulation, Computer Science Applications, Computational Mathematics, B Journal, SDG 16 - Peace, Justice and Strong Institutions

Citation

Gerbrands, P, Unger, B, Getzner, M & Ferwerda, J 2022, 'The effect of anti-money laundering policies : an empirical network analysis', EPJ Data Science, vol. 11, no. 1, 15. https://doi.org/10.1140/epjds/s13688-022-00328-8