Forecasting consumer credit recovery failure: classification approaches

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6 Scopus citations

Abstract

This study proposes an advanced credit evaluation method for nonperforming consumer loans, which may serve as a new investment opportunity in the post-pandemic era. Our results, based on both a unique account-level data set and machine learning techniques, imply that the artificial neural network algorithm with demographic and account-related variables performs the best in terms of predicting consumer credit recovery failure within 24 months. We also find that the key determinants of such failures are the total amount of delinquent debt, the applicant’s age and the max-imum length of the overdue period. A forecasting model using the random forest algorithm can also be improved by using additional information that is determined after a debtor applies for the credit recovery program. Our findings have practical implications for banks, financial institutions and investors who need to manage and evaluate nonperforming loans.

Original languageEnglish
Pages (from-to)117-140
Number of pages24
JournalJournal of Credit Risk
Volume17
Issue number3
DOIs
StatePublished - Sep 2021

Keywords

  • classification
  • consumer credit recovery
  • credit risk
  • machine learning
  • nonperforming loans

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