Resumen
This scientific article presents a predictive model developed by the Orange software, to evaluate the credit capacity of customers, through their transactions of a commercial company, with the aim of preventing delinquency and lack of cash flow. The model is guided by the SEMMA methodology and uses neural network, logistic regression and decision tree algorithms, and its accuracy was measured by performance indicators. The results showed that the decision tree algorithm achieved an accuracy of 99%, which demonstrates the efficiency of the model and the prediction if the client will comply with the payment. In addition, a significant decrease in the time required to assess the creditworthiness of clients was identified after the implementation of the intelligent predictive model. Before the model, 9 human operations were required to assess credit, while after the model it was reduced to only 6 human operations. This translated into a reduction in operating time of 33.33%. In addition, the implementation of the predictive model also made it possible to significantly reduce the time required to complete the first workflow. Before the model, the collection process could take from 60 to 240 days, but after the implementation of the model, the collection time was reduced to only 60 days. In addition, the implementation of the model was also able to completely eliminate delinquent customers, indicating a significant improvement in the company's credit risk management and productivity improvement.
Título traducido de la contribución | Intelligent predictive model applying Data Mining strategies for a credit evaluation of a commercial company |
---|---|
Idioma original | Español |
Título de la publicación alojada | Proceedings of the 21st LACCEI International Multi-Conference for Engineering, Education and Technology |
Subtítulo de la publicación alojada | Leadership in Education and Innovation in Engineering in the Framework of Global Transformations: Integration and Alliances for Integral Development, LACCEI 2023 |
Editores | Maria M. Larrondo Petrie, Jose Texier, Rodolfo Andres Rivas Matta |
Editorial | Latin American and Caribbean Consortium of Engineering Institutions |
ISBN (versión digital) | 9786289520743 |
Estado | Indizado - 2023 |
Publicado de forma externa | Sí |
Evento | 21st LACCEI International Multi-Conference for Engineering, Education and Technology, LACCEI 2023 - Buenos Aires, Argentina Duración: 19 jul. 2023 → 21 jul. 2023 |
Serie de la publicación
Nombre | Proceedings of the LACCEI international Multi-conference for Engineering, Education and Technology |
---|---|
Volumen | 2023-July |
ISSN (versión digital) | 2414-6390 |
Conferencia
Conferencia | 21st LACCEI International Multi-Conference for Engineering, Education and Technology, LACCEI 2023 |
---|---|
País/Territorio | Argentina |
Ciudad | Buenos Aires |
Período | 19/07/23 → 21/07/23 |
Nota bibliográfica
Publisher Copyright:© 2023 Latin American and Caribbean Consortium of Engineering Institutions. All rights reserved.
Palabras clave
- Collections
- Decision tree
- Machine Learning
- Predictive model
- Process mining