Simplifying credit scoring rules using LVQ + PSO

Autores
Lanzarini, Laura Cristina; Villa Monte, Augusto; Bariviera, Aurelio F.; Santana, Jimbo
Año de publicación
2017
Idioma
inglés
Tipo de recurso
artículo
Estado
versión enviada
Descripción
One of the key elements in the banking industry rely on the appropriate selection of customers. In order to manage credit risk, banks dedicate special efforts in order to classify customers according to their risk. The usual decision making process consists in gathering personal and financial information about the borrower. Processing this information can be time consuming, and presents some difficulties due to the heterogeneous structure of data. We offer in this paper an alternative method that is able to classify customers’ profiles from numerical and nominal attributes. The key feature of our method, called LVQ+PSO, is the finding of a reduced set of classifying rules. This is possible, due to the combination of a competitive neural network with an optimization technique. These rules constitute a predictive model for credit risk approval. The reduced quantity of rules makes this method not only useful for credit officers aiming to make quick decisions about granting a credit, but also could act as borrower’s self selection. Our method was applied to an actual database of a credit consumer financial institution in Ecuador. We obtain very satisfactory results. Future research lines are exposed.
Materia
Ingenierías y Tecnologías
classification
credit risk
particle swarm optimization
learning vector quantization
Nivel de accesibilidad
acceso abierto
Condiciones de uso
http://creativecommons.org/licenses/by/4.0/
Repositorio
CIC Digital (CICBA)
Institución
Comisión de Investigaciones Científicas de la Provincia de Buenos Aires
OAI Identificador
oai:digital.cic.gba.gob.ar:11746/6602

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repository_id_str 9441
network_name_str CIC Digital (CICBA)
spelling Simplifying credit scoring rules using LVQ + PSOLanzarini, Laura CristinaVilla Monte, AugustoBariviera, Aurelio F.Santana, JimboIngenierías y Tecnologíasclassificationcredit riskparticle swarm optimizationlearning vector quantizationOne of the key elements in the banking industry rely on the appropriate selection of customers. In order to manage credit risk, banks dedicate special efforts in order to classify customers according to their risk. The usual decision making process consists in gathering personal and financial information about the borrower. Processing this information can be time consuming, and presents some difficulties due to the heterogeneous structure of data. We offer in this paper an alternative method that is able to classify customers’ profiles from numerical and nominal attributes. The key feature of our method, called LVQ+PSO, is the finding of a reduced set of classifying rules. This is possible, due to the combination of a competitive neural network with an optimization technique. These rules constitute a predictive model for credit risk approval. The reduced quantity of rules makes this method not only useful for credit officers aiming to make quick decisions about granting a credit, but also could act as borrower’s self selection. Our method was applied to an actual database of a credit consumer financial institution in Ecuador. We obtain very satisfactory results. Future research lines are exposed.2017info:eu-repo/semantics/articleinfo:eu-repo/semantics/submittedVersionhttp://purl.org/coar/resource_type/c_6501info:ar-repo/semantics/articuloapplication/pdfapplication/pdfhttps://digital.cic.gba.gob.ar/handle/11746/6602enginfo:eu-repo/semantics/altIdentifier/doi/10.1108/K-06-2016-0158info:eu-repo/semantics/openAccesshttp://creativecommons.org/licenses/by/4.0/reponame:CIC Digital (CICBA)instname:Comisión de Investigaciones Científicas de la Provincia de Buenos Airesinstacron:CICBA2025-10-16T09:27:33Zoai:digital.cic.gba.gob.ar:11746/6602Institucionalhttp://digital.cic.gba.gob.arOrganismo científico-tecnológicoNo correspondehttp://digital.cic.gba.gob.ar/oai/snrdmarisa.degiusti@sedici.unlp.edu.arArgentinaNo correspondeNo correspondeNo correspondeopendoar:94412025-10-16 09:27:33.619CIC Digital (CICBA) - Comisión de Investigaciones Científicas de la Provincia de Buenos Airesfalse
dc.title.none.fl_str_mv Simplifying credit scoring rules using LVQ + PSO
title Simplifying credit scoring rules using LVQ + PSO
spellingShingle Simplifying credit scoring rules using LVQ + PSO
Lanzarini, Laura Cristina
Ingenierías y Tecnologías
classification
credit risk
particle swarm optimization
learning vector quantization
title_short Simplifying credit scoring rules using LVQ + PSO
title_full Simplifying credit scoring rules using LVQ + PSO
title_fullStr Simplifying credit scoring rules using LVQ + PSO
title_full_unstemmed Simplifying credit scoring rules using LVQ + PSO
title_sort Simplifying credit scoring rules using LVQ + PSO
dc.creator.none.fl_str_mv Lanzarini, Laura Cristina
Villa Monte, Augusto
Bariviera, Aurelio F.
Santana, Jimbo
author Lanzarini, Laura Cristina
author_facet Lanzarini, Laura Cristina
Villa Monte, Augusto
Bariviera, Aurelio F.
Santana, Jimbo
author_role author
author2 Villa Monte, Augusto
Bariviera, Aurelio F.
Santana, Jimbo
author2_role author
author
author
dc.subject.none.fl_str_mv Ingenierías y Tecnologías
classification
credit risk
particle swarm optimization
learning vector quantization
topic Ingenierías y Tecnologías
classification
credit risk
particle swarm optimization
learning vector quantization
dc.description.none.fl_txt_mv One of the key elements in the banking industry rely on the appropriate selection of customers. In order to manage credit risk, banks dedicate special efforts in order to classify customers according to their risk. The usual decision making process consists in gathering personal and financial information about the borrower. Processing this information can be time consuming, and presents some difficulties due to the heterogeneous structure of data. We offer in this paper an alternative method that is able to classify customers’ profiles from numerical and nominal attributes. The key feature of our method, called LVQ+PSO, is the finding of a reduced set of classifying rules. This is possible, due to the combination of a competitive neural network with an optimization technique. These rules constitute a predictive model for credit risk approval. The reduced quantity of rules makes this method not only useful for credit officers aiming to make quick decisions about granting a credit, but also could act as borrower’s self selection. Our method was applied to an actual database of a credit consumer financial institution in Ecuador. We obtain very satisfactory results. Future research lines are exposed.
description One of the key elements in the banking industry rely on the appropriate selection of customers. In order to manage credit risk, banks dedicate special efforts in order to classify customers according to their risk. The usual decision making process consists in gathering personal and financial information about the borrower. Processing this information can be time consuming, and presents some difficulties due to the heterogeneous structure of data. We offer in this paper an alternative method that is able to classify customers’ profiles from numerical and nominal attributes. The key feature of our method, called LVQ+PSO, is the finding of a reduced set of classifying rules. This is possible, due to the combination of a competitive neural network with an optimization technique. These rules constitute a predictive model for credit risk approval. The reduced quantity of rules makes this method not only useful for credit officers aiming to make quick decisions about granting a credit, but also could act as borrower’s self selection. Our method was applied to an actual database of a credit consumer financial institution in Ecuador. We obtain very satisfactory results. Future research lines are exposed.
publishDate 2017
dc.date.none.fl_str_mv 2017
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info:eu-repo/semantics/submittedVersion
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info:ar-repo/semantics/articulo
format article
status_str submittedVersion
dc.identifier.none.fl_str_mv https://digital.cic.gba.gob.ar/handle/11746/6602
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dc.language.none.fl_str_mv eng
language eng
dc.relation.none.fl_str_mv info:eu-repo/semantics/altIdentifier/doi/10.1108/K-06-2016-0158
dc.rights.none.fl_str_mv info:eu-repo/semantics/openAccess
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eu_rights_str_mv openAccess
rights_invalid_str_mv http://creativecommons.org/licenses/by/4.0/
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institution CICBA
repository.name.fl_str_mv CIC Digital (CICBA) - Comisión de Investigaciones Científicas de la Provincia de Buenos Aires
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