Detection of Fraudulent Transactions Through a Generalized Mixed Linear Models

The detection of bank frauds is a topic which many financial sector companies have invested time and resources into. However, finding patterns in the methodologies used to commit fraud in banks is a job that primarily involves intimate knowledge of customer behavior, with the idea of isolating those...

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Autores:
Gómez–Restrepo, Jackelyne
Cogollo–Flórez, Myladis R
Tipo de recurso:
Fecha de publicación:
2012
Institución:
Universidad EAFIT
Repositorio:
Repositorio EAFIT
Idioma:
eng
OAI Identifier:
oai:repository.eafit.edu.co:10784/14454
Acceso en línea:
http://hdl.handle.net/10784/14454
Palabra clave:
Generalized Linear Model
Transactional History
Detected Frauds
Outliers Detection
Modelo Lineal Generalizado
Historial De Transacciones
Fraudes Detectados
Detección De Valores Atípicos
Rights
License
Copyright (c) 2012 Jackelyne Gómez–Restrepo, Myladis R Cogollo–Flórez
Description
Summary:The detection of bank frauds is a topic which many financial sector companies have invested time and resources into. However, finding patterns in the methodologies used to commit fraud in banks is a job that primarily involves intimate knowledge of customer behavior, with the idea of isolating those transactions which do not correspond to what the client usually does. Thus, the solutions proposed in literature tend to focus on identifying outliersor groups, but fail to analyse each client or forecast fraud. This paper evaluates the implementation of a generalized linear model to detect fraud. With this model, unlike conventional methods, we consider the heterogeneity of customers. We not only generate a global model, but also a model for each customer which describes the behavior of each one according to their transactional history and previously detected fraudulent transactions. In particular, a mixed logistic model is used to estimate the probability that a transactionis fraudulent, using information that has been taken by the banking systems in different moments of time.