Gompertz zero-inflated cure rate regression models applied to credit risk data |
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Authors: | Janaina S. B. Toledo Vera Lucia D. Tomazella Cleide Mayra M. Lima Matheus H. Felix |
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Affiliation: | 1. Serasa Experian, São Paulo, SP, Brazil;2. Department of Statistics, Federal University of São Carlos, São Carlos, SP, Brazil;3. Department of Statistics, Federal University of Piauí, Ministro Petrônio Portella University Campus, Ininga, CEP 64049-550 Teresina/PI, Brazil |
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Abstract: | In the financial market, it is important to consider that there is a proportion of customers that have settled their debt in time zero, immediately recovering their ability to pay. In this context, in this paper, we propose a survival analysis methodology that allows the insertion of times equal to zero in scenarios where credit risk is observed. The proposed model addresses the survival analysis model of the zero-inflated cure rate which incorporates the heterogeneity of three subgroups (individuals having events in the initial time, and individuals not susceptible and susceptible to the event). In our proposal, all available survival data of customers are modeled considering that the number of competitive causes follows a Poisson distribution and the baseline risk function follows a Gompertz distribution. The model parameter estimation is obtained by the maximum likelihood estimation procedure and simulation studies are conducted to evaluate the estimators' performance. The studied methodology will be applied to a credit database provided by a financial institution in Brazil. |
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Keywords: | credit risk financial data Gompertz distribution long-term model survival zero-inflated |
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