Title of article :
Identifying the Suspected Cases of Money Laundering in Banking Using Multiple Attribute Decision Making (MADM)
Author/Authors :
Parsaee Tabar, Azam Department of Management - Faculty of Social Sciences and Economics - Alzahra University, Tehran, Iran , Abdolvand, Neda Department of Management - Faculty of Social Sciences and Economics - Alzahra University, Tehran, , Rajaee Harand, Saeedeh Department of Management - Faculty of Social Sciences and Economics - Alzahra University, Tehran, Iran
Abstract :
Money laundering is among the most common financial crimes that negatively affect
countries' economies and hurt their social and political relations. With the increasing
growth of e-banking and the increase in electronic financial transactions, the
identification of money laundering methods and behaviors has become more complex;
because money launderers, by accessing the Internet and using new technologies, find
new ways to legalize their illegal income. Although many efforts have been made to
identify suspected cases of money laundering and fight against this financial crime,
little success has been achieved in this regard, especially in developing countries.
Hence, this study tries to identify the risk factors involved in money laundering in
banking transactions. To this end, multiple attribute decision-making methods, such as
the Shannon entropy method, hierarchical analysis, and two-level fuzzy hierarchical
analysis, have been used to assess and score the risk of various transactions in money
laundering. The results indicated that the highest risk of money laundering was in the
POS transactions.
Farsi abstract :
فاقد چكيده فارسي
Keywords :
Money Laundering , Trading Organized Crime , Multiple Attribute Decision Making , Hierarchical Analysis , Fuzzy Hierarchical Analysis
Journal title :
Journal of Money and Economy (Money and Economy)