Consumer Bankruptcy Prediction Using Balanced and Imbalanced Data - Publication - Bridge of Knowledge

Search

Consumer Bankruptcy Prediction Using Balanced and Imbalanced Data

Abstract

This paper examines the usefulness of logit regression in forecasting the consumer bankruptcy of households using an imbalanced dataset. The research on consumer bankruptcy prediction is of paramount importance as it aims to build statistical models that can identify consumers in a difficult financial situation that may lead to consumer bankruptcy. In the face of the current global pandemic crisis, the future of household finances is uncertain. The change of the macroeconomic and microeconomic situation of households requires searching for better and more precise methods. The research relies on four samples of households: two learning samples (imbalanced and balanced) and two testing samples (imbalanced and balanced) from the Survey of Consumer Finances (SCF) which was conducted in the United States. The results show that the predictive performance of the logit model based on a balanced sample is more effective compared to the one based on an imbalanced sample. Furthermore, mortgage debt to assets ratio, age, being married, having credit constraints, payday loans or payments more than 60 days past due in the last year appear to be predictors of consumer bankruptcy which increase the risk of becoming bankrupt. Moreover, both the ratio of credit card debt to overall debt and owning a house decrease the risk of going bankrupt.

Citations

  • 9

    CrossRef

  • 0

    Web of Science

  • 1 2

    Scopus

Author (1)

Cite as

Full text

full text is not available in portal

Keywords

Details

Category:
Magazine publication
Type:
Magazine publication
Published in:
Risks
ISSN: 2227-9091
Publication year:
2022
DOI:
Digital Object Identifier (open in new tab) 10.3390/risks10020024
Verified by:
No verification

seen 61 times

Recommended for you

Meta Tags