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On the determinants and prediction of corporate financial distress in India

On the determinants and prediction of corporate financial distress in India
On the determinants and prediction of corporate financial distress in India
Purpose: the main aim of the study is to identify some critical microeconomic determinants of financial distress and to design a parsimonious distress prediction model for an emerging economy like India. In doing so, the authors also attempt to compare the forecasting accuracy of alternative distress prediction techniques.

Design/methodology/approach: in this study, the authors use two alternatives accounting information-based definitions of financial distress to construct a measure of financial distress. The authors then use the binomial logit model and two other popular machine learning–based models, namely artificial neural network and support vector machine, to compare the distress prediction accuracy rate of these alternative techniques for the Indian corporate sector.

Findings: the study’s empirical results suggest that five financial ratios, namely return on capital employed, cash flows to total liability, asset turnover ratio, fixed assets to total assets, debt to equity ratio and a measure of firm size (log total assets), play a highly significant role in distress prediction. The study’s findings suggest that machine learning-based models, namely support vector machine (SVM) and artificial neural network (ANN), are superior in terms of their prediction accuracy compared to the simple binomial logit model. Results also suggest that one-year-ahead forecasts are relatively better than the two-year-ahead forecasts.

Practical implications: the findings of the study have some important practical implications for creditors, policymakers, regulators and other stakeholders. First, rather than monitoring and collecting information on a list of predictor variables, only six most important accounting ratios may be monitored to track the transition of a healthy firm into financial distress. Second, our six-factor model can be used to devise a sound early warning system for corporate financial distress. Three, machine learning–based distress prediction models have prediction accuracy superiority over the commonly used time series model in the available literature for distress prediction involving a binary dependent variable.

Originality/value: this study is one of the first comprehensive attempts to investigate and design a parsimonious distress prediction model for the emerging Indian economy which is currently facing high levels of corporate financial distress. Unlike the previous studies, the authors use two different accounting information-based measures of financial distress in order to identify an effective way of measuring financial distress. Some of the determinants of financial distress identified in this study are different from the popular distress prediction models used in the literature. Our distress prediction model can be useful for the other emerging markets for distress prediction.
0307-4358
Sehgal, Sanjay
32e84960-8621-4a76-8bd4-1acdef4da7f2
Mishra, Ristesh
47b8d699-e74a-4767-abd4-3a88d198aa60
Diesting, Florent
fca38ed1-0257-4b12-ba5a-7891c13cbf01
Vashisht, Rupali
9a642de2-5cf5-488d-a32f-34a2686abddf
Sehgal, Sanjay
32e84960-8621-4a76-8bd4-1acdef4da7f2
Mishra, Ristesh
47b8d699-e74a-4767-abd4-3a88d198aa60
Diesting, Florent
fca38ed1-0257-4b12-ba5a-7891c13cbf01
Vashisht, Rupali
9a642de2-5cf5-488d-a32f-34a2686abddf

Sehgal, Sanjay, Mishra, Ristesh, Diesting, Florent and Vashisht, Rupali (2021) On the determinants and prediction of corporate financial distress in India. Managerial Finance, 47 (10). (doi:10.1108/MF-06-2020-0332).

Record type: Article

Abstract

Purpose: the main aim of the study is to identify some critical microeconomic determinants of financial distress and to design a parsimonious distress prediction model for an emerging economy like India. In doing so, the authors also attempt to compare the forecasting accuracy of alternative distress prediction techniques.

Design/methodology/approach: in this study, the authors use two alternatives accounting information-based definitions of financial distress to construct a measure of financial distress. The authors then use the binomial logit model and two other popular machine learning–based models, namely artificial neural network and support vector machine, to compare the distress prediction accuracy rate of these alternative techniques for the Indian corporate sector.

Findings: the study’s empirical results suggest that five financial ratios, namely return on capital employed, cash flows to total liability, asset turnover ratio, fixed assets to total assets, debt to equity ratio and a measure of firm size (log total assets), play a highly significant role in distress prediction. The study’s findings suggest that machine learning-based models, namely support vector machine (SVM) and artificial neural network (ANN), are superior in terms of their prediction accuracy compared to the simple binomial logit model. Results also suggest that one-year-ahead forecasts are relatively better than the two-year-ahead forecasts.

Practical implications: the findings of the study have some important practical implications for creditors, policymakers, regulators and other stakeholders. First, rather than monitoring and collecting information on a list of predictor variables, only six most important accounting ratios may be monitored to track the transition of a healthy firm into financial distress. Second, our six-factor model can be used to devise a sound early warning system for corporate financial distress. Three, machine learning–based distress prediction models have prediction accuracy superiority over the commonly used time series model in the available literature for distress prediction involving a binary dependent variable.

Originality/value: this study is one of the first comprehensive attempts to investigate and design a parsimonious distress prediction model for the emerging Indian economy which is currently facing high levels of corporate financial distress. Unlike the previous studies, the authors use two different accounting information-based measures of financial distress in order to identify an effective way of measuring financial distress. Some of the determinants of financial distress identified in this study are different from the popular distress prediction models used in the literature. Our distress prediction model can be useful for the other emerging markets for distress prediction.

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MF-06-2020-0332.R3_Proof_hi - Accepted Manuscript
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More information

Accepted/In Press date: 7 April 2021
e-pub ahead of print date: 5 May 2021
Published date: May 2021

Identifiers

Local EPrints ID: 470764
URI: http://eprints.soton.ac.uk/id/eprint/470764
ISSN: 0307-4358
PURE UUID: a5ffa30e-99b9-478c-9e39-9df5450ec31c
ORCID for Rupali Vashisht: ORCID iD orcid.org/0000-0002-6899-4596

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Date deposited: 19 Oct 2022 17:01
Last modified: 17 Mar 2024 04:09

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Contributors

Author: Sanjay Sehgal
Author: Ristesh Mishra
Author: Florent Diesting
Author: Rupali Vashisht ORCID iD

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