Autoregressive-based outlier algorithm to detect money laundering activities

S., Kannan and K., Somasundaram (2017) Autoregressive-based outlier algorithm to detect money laundering activities. Journal of Money Laundering Control, 20 (2). pp. 190-202. ISSN 1368-5201

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Abstract

Purpose

Due to the large-size, non-uniform transactions per day, the money laundering detection (MLD) is a time-consuming and difficult process. The major purpose of the proposed auto-regressive (AR) outlier-based MLD (AROMLD) is to reduce the time consumption for handling large-sized non-uniform transactions.
Design/methodology/approach

The AR-based outlier design produces consistent asymptotic distributed results that enhance the demand-forecasting abilities. Besides, the inter-quartile range (IQR) formulations proposed in this paper support the detailed analysis of time-series data pairs.
Findings

The prediction of high-dimensionality and the difficulties in the relationship/difference between the data pairs makes the time-series mining as a complex task. The presence of domain invariance in time-series mining initiates the regressive formulation for outlier detection. The deep analysis of time-varying process and the demand of forecasting combine the AR and the IQR formulations for an effective outlier detection.
Research limitations/implications

The present research focuses on the detection of an outlier in the previous financial transaction, by using the AR model. Prediction of the possibility of an outlier in future transactions remains a major issue.
Originality/value

The lack of prior segmentation of ML detection suffers from dimensionality. Besides, the absence of boundary to isolate the normal and suspicious transactions induces the limitations. The lack of deep analysis and the time consumption are overwhelmed by using the regression formulation.

Item Type: Article
Subjects: Medicine > Orthopaedics and Sports Medicine
Divisions: Arts and Science > Vinayaka Mission's Kirupananda Variyar Arts & Science College, Salem > Computer Science
Depositing User: Unnamed user with email techsupport@mosys.org
Last Modified: 09 Dec 2025 10:35
URI: https://vmuir.mosys.org/id/eprint/3981

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