Regressão logística e análise discriminante na predição da recuperação de portfólios de créditos do tipo non-performing loans

Detalhes bibliográficos
Autor(a) principal: Silva, Priscila Cristina
Data de Publicação: 2017
Tipo de documento: Dissertação
Idioma: por
Título da fonte: Biblioteca Digital de Teses e Dissertações da Uninove
Texto Completo: http://bibliotecatede.uninove.br/handle/tede/1702
Resumo: Customers with credit agreement in arrears for more than 90 days are characterized as non-performing loans and cause concerns in credit companies because the lack of guarantee of discharge debtor's amount. To treat this type of customer are applied collection scoring models that have as main objective to predict those debtors who have propensity to honor their debts, that is, this model focuses on credit recovery. Models based on statistical prediction techniques can be applied to the recovery of these credits, such as logistic regression and discriminant analysis. Therefore, the aim of this paper was to apply logistic regression and discriminant analysis models in predicting the recovery of non-performing loans credit portfolios. The database used was provided by the company Serasa Experian and contains a sample of ten thousand customers with twenty independent variables and a variable binary response (dependent) indicating whether or not the defaulting customer paid their debt. The sample was divided into training, validation and test and the models cited in the objective were applied individually. Then, two new logistic regression models and discriminant analysis were implemented from the outputs of the individually implemented models. The both models applied individually as the new models had generally good performance form, highlighting the new model of discriminant analysis that got correct classification of percentage higher than the new logistic regression model. It was concluded, then, based on the results that the models are a good option for predicting the credit portfolio recovery.
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spelling Sassi, Renato JoséSassi, Renato JoséDias, Cleber GustavoSchimit, Pedro Henrique TriguisSilva, Priscila Cristina2017-08-04T21:33:38Z2017-02-23Silva, Priscila Cristina. Regressão logística e análise discriminante na predição da recuperação de portfólios de créditos do tipo non-performing loans. 2017. 119 f. Dissertação( Programa de Mestrado em Engenharia de Produção) - Universidade Nove de Julho, São Paulo.http://bibliotecatede.uninove.br/handle/tede/1702Customers with credit agreement in arrears for more than 90 days are characterized as non-performing loans and cause concerns in credit companies because the lack of guarantee of discharge debtor's amount. To treat this type of customer are applied collection scoring models that have as main objective to predict those debtors who have propensity to honor their debts, that is, this model focuses on credit recovery. Models based on statistical prediction techniques can be applied to the recovery of these credits, such as logistic regression and discriminant analysis. Therefore, the aim of this paper was to apply logistic regression and discriminant analysis models in predicting the recovery of non-performing loans credit portfolios. The database used was provided by the company Serasa Experian and contains a sample of ten thousand customers with twenty independent variables and a variable binary response (dependent) indicating whether or not the defaulting customer paid their debt. The sample was divided into training, validation and test and the models cited in the objective were applied individually. Then, two new logistic regression models and discriminant analysis were implemented from the outputs of the individually implemented models. The both models applied individually as the new models had generally good performance form, highlighting the new model of discriminant analysis that got correct classification of percentage higher than the new logistic regression model. It was concluded, then, based on the results that the models are a good option for predicting the credit portfolio recovery.Os clientes que possuem contrato de crédito em atraso há mais de 90 dias são caracterizados como non-performing loans e preocupam as instituições financeiras fornecedoras de crédito pela falta de garantia da quitação desse montante devedor. Para tratar este tipo de cliente são aplicados modelos de collection scoring que têm como principal objetivo predizer aqueles devedores que possuem propensão em quitar suas dívidas, ou seja, esse modelo busca a recuperação de crédito. Modelos baseados em técnicas estatísticas de predição podem ser aplicados na recuperação como a regressão logística e a análise discriminante. Deste modo, o objetivo deste trabalho foi aplicar os modelos de regressão logística e análise discriminante na predição da recuperação de portfólios de crédito do tipo non-performing loans. A base de dados utilizada foi cedida pela empresa Serasa Experian e contém uma amostra de dez mil indivíduos com vinte variáveis independentes e uma variável resposta (dependente) binária indicando se o cliente inadimplente pagou ou não sua dívida. A amostra foi dividida em treinamento, validação e teste e foram aplicados os modelos citados de forma individual. Em seguida, dois novos modelos de regressão logística e análise discriminante foram implementados a partir das saídas (outputs) dos modelos aplicados individualmente. Com base nos resultados, tanto os modelos aplicados individualmente quanto os novos modelos apresentaram bom desempenho, com destaque para o novo modelo de análise discriminante que apresentou um percentual de classificações corretas superior ao novo modelo de regressão logística. Concluiu-se, então, que os modelos são uma boa opção para predição da recuperação de portfólios de crédito do tipo non-performing loans.Submitted by Nadir Basilio (nadirsb@uninove.br) on 2017-08-04T21:33:38Z No. of bitstreams: 1 Priscila Cristina Silva.pdf: 2177666 bytes, checksum: a8d3c5290664fa16f138371def86fcdd (MD5)Made available in DSpace on 2017-08-04T21:33:38Z (GMT). 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dc.title.por.fl_str_mv Regressão logística e análise discriminante na predição da recuperação de portfólios de créditos do tipo non-performing loans
dc.title.alternative.eng.fl_str_mv Logistic regression and discriminant analysis in prediction of the recovery of non-performing loans credits portfolio
title Regressão logística e análise discriminante na predição da recuperação de portfólios de créditos do tipo non-performing loans
spellingShingle Regressão logística e análise discriminante na predição da recuperação de portfólios de créditos do tipo non-performing loans
Silva, Priscila Cristina
collection scoring
non-performing loans
regressão logística
análise discriminante
recuperação de portfólios de crédito
collection scoring
non-performing loans
logistic regression
discriminant analysis
credit portfolio recovery
ENGENHARIAS::ENGENHARIA DE PRODUCAO
title_short Regressão logística e análise discriminante na predição da recuperação de portfólios de créditos do tipo non-performing loans
title_full Regressão logística e análise discriminante na predição da recuperação de portfólios de créditos do tipo non-performing loans
title_fullStr Regressão logística e análise discriminante na predição da recuperação de portfólios de créditos do tipo non-performing loans
title_full_unstemmed Regressão logística e análise discriminante na predição da recuperação de portfólios de créditos do tipo non-performing loans
title_sort Regressão logística e análise discriminante na predição da recuperação de portfólios de créditos do tipo non-performing loans
author Silva, Priscila Cristina
author_facet Silva, Priscila Cristina
author_role author
dc.contributor.advisor1.fl_str_mv Sassi, Renato José
dc.contributor.referee1.fl_str_mv Sassi, Renato José
dc.contributor.referee2.fl_str_mv Dias, Cleber Gustavo
dc.contributor.referee3.fl_str_mv Schimit, Pedro Henrique Triguis
dc.contributor.author.fl_str_mv Silva, Priscila Cristina
contributor_str_mv Sassi, Renato José
Sassi, Renato José
Dias, Cleber Gustavo
Schimit, Pedro Henrique Triguis
dc.subject.por.fl_str_mv collection scoring
non-performing loans
regressão logística
análise discriminante
recuperação de portfólios de crédito
topic collection scoring
non-performing loans
regressão logística
análise discriminante
recuperação de portfólios de crédito
collection scoring
non-performing loans
logistic regression
discriminant analysis
credit portfolio recovery
ENGENHARIAS::ENGENHARIA DE PRODUCAO
dc.subject.eng.fl_str_mv collection scoring
non-performing loans
logistic regression
discriminant analysis
credit portfolio recovery
dc.subject.cnpq.fl_str_mv ENGENHARIAS::ENGENHARIA DE PRODUCAO
description Customers with credit agreement in arrears for more than 90 days are characterized as non-performing loans and cause concerns in credit companies because the lack of guarantee of discharge debtor's amount. To treat this type of customer are applied collection scoring models that have as main objective to predict those debtors who have propensity to honor their debts, that is, this model focuses on credit recovery. Models based on statistical prediction techniques can be applied to the recovery of these credits, such as logistic regression and discriminant analysis. Therefore, the aim of this paper was to apply logistic regression and discriminant analysis models in predicting the recovery of non-performing loans credit portfolios. The database used was provided by the company Serasa Experian and contains a sample of ten thousand customers with twenty independent variables and a variable binary response (dependent) indicating whether or not the defaulting customer paid their debt. The sample was divided into training, validation and test and the models cited in the objective were applied individually. Then, two new logistic regression models and discriminant analysis were implemented from the outputs of the individually implemented models. The both models applied individually as the new models had generally good performance form, highlighting the new model of discriminant analysis that got correct classification of percentage higher than the new logistic regression model. It was concluded, then, based on the results that the models are a good option for predicting the credit portfolio recovery.
publishDate 2017
dc.date.accessioned.fl_str_mv 2017-08-04T21:33:38Z
dc.date.issued.fl_str_mv 2017-02-23
dc.type.status.fl_str_mv info:eu-repo/semantics/publishedVersion
dc.type.driver.fl_str_mv info:eu-repo/semantics/masterThesis
format masterThesis
status_str publishedVersion
dc.identifier.citation.fl_str_mv Silva, Priscila Cristina. Regressão logística e análise discriminante na predição da recuperação de portfólios de créditos do tipo non-performing loans. 2017. 119 f. Dissertação( Programa de Mestrado em Engenharia de Produção) - Universidade Nove de Julho, São Paulo.
dc.identifier.uri.fl_str_mv http://bibliotecatede.uninove.br/handle/tede/1702
identifier_str_mv Silva, Priscila Cristina. Regressão logística e análise discriminante na predição da recuperação de portfólios de créditos do tipo non-performing loans. 2017. 119 f. Dissertação( Programa de Mestrado em Engenharia de Produção) - Universidade Nove de Julho, São Paulo.
url http://bibliotecatede.uninove.br/handle/tede/1702
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dc.publisher.country.fl_str_mv Brasil
dc.publisher.department.fl_str_mv Engenharia
publisher.none.fl_str_mv Universidade Nove de Julho
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