Identifying financial patterns of money laundering with social network analysis: a Brazilian case study

Author:

Sousa Lima Rafael,Marques Serrano André Luiz,Onome Imoniana Joshua,Medeiros Cupertino César

Abstract

Purpose This study aims to understand how forensic accountants can analyse bank transactions suspected of being involved with money laundering crimes in Brazil through social network analysis (SNA). Design/methodology/approach The methodological approach taken in this study was exploratory. This study cleaned and debugged bank statements from criminal investigations in Brazil using computational algorithms. Then graphs were designed and matched with money laundering regulations. Findings The findings indicated that graph techniques contribute to a range of beneficial information to help identify typical banking transactions (pooling accounts, strawmen, smurfing) used to conceal or disguise the movement of illicit resources, enhancing visual aspects of financial analysis. Research limitations/implications Research found limitations in the data sets with reduced identification of originators and beneficiaries, considered low compared to other investigations in Brazil. Furthermore, to preserve restrict information and keep data confidential, data sets used in research were not made available. Practical implications Law enforcement agencies and financial intelligence units can apply graph-based technique cited in this research to strengthen anti-money laundering activities. The results, grounded in analytical approaches, may offer a source of data to regulators and academia for future research. Originality/value This study created data sets using real-life bank statements from two investigations of competence by the Brazilian Federal Justice, including real-data perspectives in academic research. This study uses SNA, which is a popular approach in several areas of knowledge.

Publisher

Emerald

Subject

Law,General Economics, Econometrics and Finance,Public Administration

Reference47 articles.

1. Data mining applications in accounting: a review of the literature and organizing framework;International Journal of Accounting Information Systems,2017

2. Awasthi, A. (2012), “Clustering algorithms for anti-money laundering using graph theory and social network analysis”, Master Research Projects, Barcelona, Universitat Autònoma de Barcelona, available at: https://ddd.uab.cat/record/102108 (accessed 25 April 2020).

3. Communication patterns in task-oriented groups;The Journal of the Acoustical Society of America,1950

4. BCB (2020), Circular Letter 4001 of January 29, 2020. It discloses a list of operations and situations that may configure evidence of the occurrence of the crimes provided for in Law 9613 of March 3, 1998, Brazil.

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