Distress risk and stock returns : Malaysia evidence

Predicting firms’ financial distress is important as accurate prediction would improve financial and investment decisions. The logit model and multiple discriminant analysis are commonly used predicting approaches among researchers, but both models encounter econometric problems that may affect the...

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Bibliographic Details
Main Author: Ahmad Harith Ashrofie, Hanafi
Format: Thesis
Language:eng
eng
Published: 2023
Subjects:
Online Access:https://etd.uum.edu.my/11161/1/depositpermission.pdf
https://etd.uum.edu.my/11161/2/s901258_01.pdf
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Summary:Predicting firms’ financial distress is important as accurate prediction would improve financial and investment decisions. The logit model and multiple discriminant analysis are commonly used predicting approaches among researchers, but both models encounter econometric problems that may affect the model's consistency and validity. In order to overcome the issues, researchers suggest hazard model to produce more consistent and valid prediction model. Thus, this study examines and compares the accuracy, consistency, and validity of the logit and hazard model in predicting financial distress. A model with high accuracy, consistency, and validity is used to measure distress risk, which represents one of the risk factors in estimating returns. Prior studies have employed a small sample size and short study period in predicting financial distress or estimating the relationship between distress risk and returns for the Malaysian market, where the results may not have adequately represented the entire market. To address this issue, this study utilises data from 1079 firms during the period of 1990 to 2020 to develop prediction models based on 18,314 firm-year observations. Meanwhile, in estimating return, this study uses 141,425 monthly observations. The results show that liquidity, activity, profitability, and leverage ratios are significant factors in predicting financial distress. Furthermore, the hazard model seems to generate higher accuracy and consistency relative to the logit model. In estimating returns, financial distress risk is consistently insignificant in all models while size and value show consistent significant results in all models. As the developed model could be used to complement the existing guidelines, these results are useful for policymakers such as Bursa Malaysia in improving the policies and guidelines related to Amended Practice Notes 17 (APN17). As for the creditors, the developed model is useful in making a lending decision since the model is helpful in measuring and monitoring firms’ distress levels.