Journal article

Predicting financial distress of Zimbabwean banks


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Publication Details

Author list: Isabel Linda Moyo, Victor Gumbo, Eriyoti Chikodza, Brian Jones

Publisher: World Scientific Publishing

Publication year: 2020

Volume number: 7

Issue number: 4

ISSN: 2424-7863

eISSN: 2424-7944

URL: https://www.worldscientific.com/doi/10.1142/S2424786320500395

Languages: English



Prediction of financial distress for lending institutions has been a major concern since the financial crisis of 2008. The motivation for empirical research in bank bankruptcy prediction is clear — the early detection of financial distress and the use of corrective measures are preferable to protection under bankruptcy law. If it is possible to recognize failing banks in advance, then appropriate action can be taken to reverse the process before it is too late. This study uses panel multi-state Markov (MSM) chains to build a predictive model for financial distress of banks in Zimbabwe. Microeconomic factors and the CAMELS ratings were used in the construction of the MSM model. Distress probabilities were calculated using hazard ratios found by MSM and then the Altman Z-Scores were generated for each bank as a means of validating the built MSM model. The scores generated were very similar to the current CAMELS ratings.


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Last updated on 2022-29-11 at 11:35