Please use this identifier to cite or link to this item: http://repositorio.ufla.br/jspui/handle/1/39608
Title: Analysis of credit risk faced by public companies in Brazil: an approach based on discriminant analysis, logistic regression and artificial neural networks
Other Titles: Análisis del riesgo de crédito que enfrentan las empresas de capital abierto en Brasil: un enfoque utilizando análisis discriminante regresión logística y redes neuronales artificiales
Análise de risco de crédito enfrentada por empresas de capital aberto no Brasil: uma abordagem utilizando análise discriminante de regressão logística e redes neurais artificiais
Keywords: Credit risk
Bankruptcy
Financial indicators
Riesgo de crédito
Bancarrota
Indicadores financieros
Risco de crédito
Falência
Indicadores financeiros
Issue Date: 2019
Publisher: Universidad Icesi - Facultad de Ciencias Administrativas y Económicas
Citation: PRADO, J. W. do et al. Analysis of credit risk faced by public companies in Brazil: an approach based on discriminant analysis, logistic regression and artificial neural networks. Estudios Gerenciales, Cali, v. 35, n. 153, p. 347-360, oct./dic. 2019.
Abstract: The aims of the present article are to identify the economic-financial indicators that best characterize Brazilian public companies through credit-granting analysis and to assess the most accurate techniques used to forecast business bankruptcy. Discriminant analysis, logistic regression and neural networks were the most used methods to predict insolvency. The sample comprised 121 companies from different sectors, 70 of them solvent and 51 insolvent. The conducted analyses were based on 35 economic-financial indicators. Need of working capital for net income, liquidity thermometer, return on equity, net margin, debt breakdown and equity on assets were the most relevant economic-financial indicators. Neural networks recorded the best accuracy and the Receiver Operating Characteristic Curves (ROC curve) corroborated this outcome.
URI: http://repositorio.ufla.br/jspui/handle/1/39608
Appears in Collections:DAE - Artigos publicados em periódicos



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