A Time-Frequency based Suspicious Activity Detection for Anti-Money
Laundering
- URL: http://arxiv.org/abs/2011.08492v1
- Date: Tue, 17 Nov 2020 08:01:50 GMT
- Title: A Time-Frequency based Suspicious Activity Detection for Anti-Money
Laundering
- Authors: Utku G\"orkem Ketenci and Tolga Kurt and Selim \"Onal and Cenk Erbil
and Sinan Akt\"urko\u{g}lu and Hande \c{S}erban \.Ilhan
- Abstract summary: Money laundering is the crucial mechanism utilized by criminals to inject proceeds of crime to the financial system.
Most of the current systems in these institutions are rule-based and ineffective.
This article introduces a novel feature set based on time-frequency analysis, that makes use of 2-D representations of financial transactions.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Money laundering is the crucial mechanism utilized by criminals to inject
proceeds of crime to the financial system. The primary responsibility of the
detection of suspicious activity related to money laundering is with the
financial institutions. Most of the current systems in these institutions are
rule-based and ineffective. The available data science-based anti-money
laundering (AML) models in order to replace the existing rule-based systems
work on customer relationship management (CRM) features and time
characteristics of transaction behaviour. However, there is still a challenge
on accuracy and problems around feature engineering due to thousands of
possible features.
Aiming to improve the detection performance of suspicious transaction
monitoring systems for AML systems, in this article, we introduce a novel
feature set based on time-frequency analysis, that makes use of 2-D
representations of financial transactions. Random forest is utilized as a
machine learning method, and simulated annealing is adopted for hyperparameter
tuning. The designed algorithm is tested on real banking data, proving the
efficacy of the results in practically relevant environments. It is shown that
the time-frequency characteristics of suspicious and non-suspicious entities
differentiate significantly, which would substantially improve the precision of
data science-based transaction monitoring systems looking at only time-series
transaction and CRM features.
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