bachelorThesis
Modelo de segmentación de cartera basado en el comportamiento de clientes para la gestión de cobranza
Fecha
2022-07-26Autor
Cabrera Calderón, Michelle Estefanía
Institución
Resumen
Credit sales with direct financing is an important component in the retail sector
development. In addition to the sector's own credit risk, the presence of COVID-19 has resulted
in an increase in delinquency rates due to a change in customer payment behavior as a
consequence of the country's economic situation. An ill-defined collection management can
lead to taking wrong and costly strategies, wasting resources and distorting it. This research
proposes a portfolio segmentation model based on customer behavior to improve collection
management efficiency. Adopting this approach is key to generating management policies and
establishing specific collection strategies. The model contemplates the most representative
static variables of the client's profile from the bureau, and internal dynamic behavioral
attributes. A non-hierarchical clustering approach is considered, with K-means being the
methodology to be used. The model is designed in Azure Machine Learning and concluded in
JMP for the graphical understanding it provides. The results show a different solution to the
traditional ordering, since the classification of clients is commonly based on the degree of
portfolio aging. In addition, since distance is the discriminant in the formation of clusters, this
may be the element that facilitates ordering, since it prioritizes belonging to one or another
cluster; therefore, it is feasible to use this concept as a priority approach for collection
management.