Abstract

The stability of the economy and political system of any country highly depends on the policy of anti-money laundering (AML). If government policies are incapable of handling money laundering activities in an appropriate way, the control of the economy can be transferred to criminals. The current literature provides various technical solutions, such as clustering-based anomaly detection techniques, rule-based systems, and a decision tree algorithm, to control such activities that can aid in identifying suspicious customers or transactions. However, the literature provides no effective and appropriate solutions that could aid in identifying relationships between suspicious customers or transactions. The current challenge in the field is to identify associated links between suspicious customers who are involved in money laundering. To consider this challenge, this paper discusses the challenges associated with identifying relationships such as business and family relationships and proposes a model to identify links between suspicious customers using social network analysis (SNA). The proposed model aims to identify various mafias and groups involved in money laundering activities, thereby aiding in preventing money laundering activities and potential terrorist financing. The proposed model is based on relational data of customer profiles and social networking functions metrics to identify suspicious customers and transactions. A series of experiments are conducted with financial data, and the results of these experiments show promising results for financial institutions who can gain real benefits from the proposed model.

Highlights

  • Money laundering activities within financial institutions affect the growth of national economy and weaken the political stability of a country by transferring economic power from government to criminals

  • By considering the literature review and to overcome the above-mentioned limitations and challenges, this paper proposes a relational model to identify the relationships and associations with suspicious customers in anti-money laundry (AML) using social network analysis (SNA), which can build a social network of customer profiles by utilizing the extracted financial transactions

  • The financial institutions must obtain consent from account holders regarding the usage of their data for analytics purpose so that customer profiles and their transactions can run via social network functions to identify groups who involved in Money laundering

Read more

Summary

Introduction

Money laundering activities within financial institutions affect the growth of national economy and weaken the political stability of a country by transferring economic power from government to criminals. The model make use the data on suspicious customers from our previous model [8] and identifies the various kinds of relationships that are significant in controlling money laundering. This proposed model utilizes social networks analysis functions due to their increasing popularity and their ability in capturing the relationships of suspicious customers to identify the mafia groups involved the money laundering. These relationships include those of common owner, business, spouse, parent/child, family, and likewise. We have developed various kind of rules that can be executed under customer profiles which can be used to identify existing relationships of suspicious customers

Objectives
Methods
Findings
Discussion
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call