Detecting money laundering transactions with machine learning

Author:

Jullum Martin,Løland Anders,Huseby Ragnar Bang,Ånonsen Geir,Lorentzen Johannes

Abstract

Purpose The purpose of this paper is to develop, describe and validate a machine learning model for prioritising which financial transactions should be manually investigated for potential money laundering. The model is applied to a large data set from Norway’s largest bank, DNB. Design/methodology/approach A supervised machine learning model is trained by using three types of historic data: “normal” legal transactions; those flagged as suspicious by the bank’s internal alert system; and potential money laundering cases reported to the authorities. The model is trained to predict the probability that a new transaction should be reported, using information such as background information about the sender/receiver, their earlier behaviour and their transaction history. Findings The paper demonstrates that the common approach of not using non-reported alerts (i.e. transactions that are investigated but not reported) in the training of the model can lead to sub-optimal results. The same applies to the use of normal (un-investigated) transactions. Our developed method outperforms the bank’s current approach in terms of a fair measure of performance. Originality/value This research study is one of very few published anti-money laundering (AML) models for suspicious transactions that have been applied to a realistically sized data set. The paper also presents a new performance measure specifically tailored to compare the proposed method to the bank’s existing AML system.

Publisher

Emerald

Subject

Law,General Economics, Econometrics and Finance,Public Administration

Reference33 articles.

1. Client profiling for an anti-money laundering system,2015

2. Algorithms for hyper-parameter optimization;Proceedings of the 24th International Conference on Neural Information Processing Systems,2011

3. Statistical fraud detection: a review (with discussion);Statistical Science,2002

4. Verification of forecasts expressed in terms of probability;Monthly Weather Review,1950

5. Xgboost: a scalable tree boosting system,2016

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