Client Profiling for an Anti-Money Laundering System

10/03/2015
by   Claudio Alexandre, et al.
0

We present a data mining approach for profiling bank clients in order to support the process of detection of anti-money laundering operations. We first present the overall system architecture, and then focus on the relevant component for this paper. We detail the experiments performed on real world data from a financial institution, which allowed us to group clients in clusters and then generate a set of classification rules. We discuss the relevance of the founded client profiles and of the generated classification rules. According to the defined overall agent-based architecture, these rules will be incorporated in the knowledge base of the intelligent agents responsible for the signaling of suspicious transactions.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
01/02/2018

Um Sistema Multiagente no Combate ao Braqueamento de Capitais

Money laundering is a crime that makes it possible to finance other crim...
research
04/10/2019

Inventory Management - A Case Study with NetLogo

Multi-Agent Systems (MAS) have been applied to several areas or tasks ra...
research
08/18/2021

Learning to Collaborate

In this paper, we focus on effective learning over a collaborative resea...
research
09/15/2023

Intent Detection at Scale: Tuning a Generic Model using Relevant Intents

Accurately predicting the intent of customer support requests is vital f...
research
02/14/2020

ARMS: Automated rules management system for fraud detection

Fraud detection is essential in financial services, with the potential o...
research
02/12/2018

client2vec: Towards Systematic Baselines for Banking Applications

The workflow of data scientists normally involves potentially inefficien...
research
04/26/2012

Intelligent Automated Diagnosis of Client Device Bottlenecks in Private Clouds

We present an automated solution for rapid diagnosis of client device pr...

Please sign up or login with your details

Forgot password? Click here to reset