• JoomlaWorks Simple Image Rotator
  • JoomlaWorks Simple Image Rotator
  • JoomlaWorks Simple Image Rotator
  • JoomlaWorks Simple Image Rotator
  • JoomlaWorks Simple Image Rotator
  • JoomlaWorks Simple Image Rotator
  • JoomlaWorks Simple Image Rotator
  • JoomlaWorks Simple Image Rotator
  • JoomlaWorks Simple Image Rotator
  • JoomlaWorks Simple Image Rotator
 
  Bookmark and Share
 
 
Master's Dissertation
DOI
https://doi.org/10.11606/D.92.2005.tde-27032023-142112
Document
Author
Full name
Marcos Hissashi Iguti
E-mail
Institute/School/College
Knowledge Area
Date of Defense
Published
São Paulo, 2005
Supervisor
Committee
Francisco, Gerson (President)
Ferreira, Fernando Fagundes
Vicente, Renato
Title in Portuguese
Modelos de credit scoring: regressão logística e redes neurais
Keywords in Portuguese
Crédito
Crédito direto ao consumidor
Redes neurais
Regressão logistica
Abstract in Portuguese
Scoring de crédito é um método de avaliação do risco de crédito dos pedidos de empréstimo. Tornou-se uma ferramenta popular de bancos e emissores de cartões de crédito que emprestam dinheiro diretamente aos consumidores, onde grandes volumes de transações tornam a alta velocidade e os altos padrões de qualidade um requisito importante. Neste trabalho, apresentamos e comparamos duas estratégias utilizadas para desenvolver modelos de scoring de crédito, a regressão logística e as redes neurais.
Title in English
Credit scoring models: logistic regression and neural networks
Keywords in English
Credit
Direct consumer credit
Logistic regression
Neural networks
Abstract in English
Credit scoring is a method of evaluating the credit risk of loan applications. It became a popular tool of banks and credit card issuers that lend money directly to consumers, where huge volumes of transactions made high speed and high quality standards an important requirement. In this work, we present and compare two strategies used to develop credit scoring models, the logistic regression and the neural networks.
 
WARNING - Viewing this document is conditioned on your acceptance of the following terms of use:
This document is only for private use for research and teaching activities. Reproduction for commercial use is forbidden. This rights cover the whole data about this document as well as its contents. Any uses or copies of this document in whole or in part must include the author's name.
Publishing Date
2023-03-27
 
WARNING: Learn what derived works are clicking here.
All rights of the thesis/dissertation are from the authors
CeTI-SC/STI
Digital Library of Theses and Dissertations of USP. Copyright © 2001-2024. All rights reserved.