The Power of Numerical Indicators in Predicting Bankruptcy: A Systematic Review
Abstract
:1. Introduction
2. Methodology
3. Results
4. Discussion
5. Limitations
6. Conclusions
- (1)
- The ability of numerators, through simple statistical analysis models, to predict the bankruptcy of businesses and companies.
- (2)
- Statistical analysis indicates that cash flow ratios are a dependable tool for forecasting financial distress.
- (3)
- Models are built with indicators from a specific economy; it is impossible to consider them stable and unchanging, as changes in a country’s economic conditions can potentially impact their predictive accuracy.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Author(s) | Numerical Indicators | Method | Findings |
---|---|---|---|
Valaskova et al. (2023) | Total debt ratio Debt to equity ratio Interest coverage ratio Debt to cash flow ratio Reason for financial independence Insolvency rate Gross profit margin ratio Operating profit margin ratio Net profit margin ratio Return on assets ratio Return on equity ratio Cash flow ratio Quick liquidity indicator Current liquidity ratio Current liquidity ratio Collection period ratio Credit period ratio Asset turnover ratio Inventory turnover ratio | Discrete multivariate analysis | (1) The total debt ratio, which exhibited the highest level of discriminatory capability, was incorporated into every model that was developed. (2) The models that were created demonstrated a discrimination ability exceeding 88% in total. |
Sfakianakis (2021) | Instant liquidity ratio Cash flow interest coverage Economic value added (EVA) divided by total assets | Discrete multivariate analysis | (1) In Greece, the prediction of bankruptcy can be determined by analyzing key indicators such as the immediate liquidity ratio, cash flow interest coverage, and economic value added (EVA) to total assets. (2) Before the occurrence of bankruptcy, the model accurately classified 96.43% of cases that were grouped together. (3) By employing the identical variables, the adapted prediction model for 2 and 3 years leading up to insolvency attained a precise classification rate of 92.86% and 89.29% for the grouped instances, correspondingly. |
Abdullah et al. (2019) | Equity Total liabilities to total assets Short-term liabilities to total liabilities Liquidity (current assets to current liabilities) Total asset sales Earnings before interest and taxes on total assets Net income on equity | Logistic regression | (1) The likelihood of failure is higher for new companies compared to established ones, and as the size of a company increases, so does the risk it faces. (2) Important predictors include the liquidity ratio, which measures
|
Waqas and Md-Rus (2018) | Net income on total assets Retained earnings on total assets EBIT on total assets Quick assets to current assets Circulating assets in total liabilities Current assets are current liabilities Working capital in total assets Total liabilities to total assets EBIT to interest expense Total equity to total liabilities Working capital in long-term debt Cash flow from operations to total liabilities Cash flow from operations to sales Cash flow from operations to total assets | Logistic regression | (1) Predicting financial distress can be achieved by analyzing key profitability indicators such as net income to total assets, retained earnings to total assets, and earnings before interest and taxes to total assets. (2) The significance of liquidity ratios is underscored by the findings, which showcase the predictive value of ratios such as current assets to total liabilities, working capital to total assets, and current assets to current liabilities in anticipating financial turmoil. (3) Leverage ratios such as total liabilities to total assets and interest coverage ratio play a crucial role in forecasting financial distress. (4) Of the three cash flow ratios, it is only the ratio of cash flow from operations to sales that holds true as a meaningful indicator of potential financial difficulties. (5) The accuracy level stands at 92%. |
Almamy et al. (2016) | Working capital/total assets Retained earnings/total assets Earnings before interest and taxes (EBIT)/Total assets Market value equity/total liabilities Sales/total assets Operating cash flow/total liabilities | Discrete multivariate analysis (extension of the Altman Z-score model) | (1) The combination of the original variable Z-score and cash flow is crucial in accurately predicting the likelihood of bankruptcy. (2) The J-UK model exhibited a predictive power of 82.9%, surpassing the Z-score model in comparison. (3) After evaluating the predictive abilities of the J-UK model and the Z-score UK model, it was concluded that the J-UK model exhibited superior performance in accurately predicting outcomes before, during, and after the financial crisis. |
Brozyna et al. (2016) | 5 liquidity ratios 7 profitability indicators 9 debt ratios and financial leverage effect 4 indicators of operational efficiency 3 financial indicators characterizing the capital and material structure of companies | Linear discriminant analysis and logistic regression | High quality bankruptcy prediction |
Cultrera and Brédart (2016) | General circulating liquidity index Return on operating assets before depreciation Global degree of economic independence Percentage of gross value added allocated to tax expenditure Cash flow/total debt | Logistic regression | (1) Firms with lower liquidity, profitability, debt structure, and value added ratios exhibited a higher likelihood of bankruptcy. (2) The model did not indicate any significance in the solvency ratio (total debt/cash flow). (3) It is a higher probability for smaller and recently established SMEs to experience bankruptcy. (4) The level of accuracy achieved is 79.23%. |
Fawzi et al. (2015) | Liquidity Indicators Cash flow from operating activities (CFFO)/current liabilities (CL) Solvency ratios Cash flow interest coverage − cash flow from operating activities (CFFO) + interest expense (I)/interest expense (I) Cash flow from operating activities (CFFO)/total liabilities (TL) Cash flow from operating activities (CFFO)/long-term liabilities (LTL) Cash flow from investing activities (CFFI)/total liabilities (TL) Cash flow from financing activities (CFFF)/total liabilities (TL) Cash flow from operating activities (CFFO)/equity (SHE) Efficiency indicators Cash flow from operating activities (CFFO)/total assets (TA) Cash flow from operating activities (CFFO)/fixed assets (FA) Profitability indicators Cash flow from operating activities (CFFO)/net income (NI) Cash flow from operating activities (CFFO)/total revenue (TR) | Logistic regression | (1) With 82.1% accuracy, the model effectively differentiates between healthy and unhealthy firms, as indicated by the rate of correctly classified sample cases. (2) By examining solvency and profitability ratios that rely on cash flow variables, one can effectively forecast financial distress. These ratios, including CFFO+I/I, CFFO/TL, CFFI/TL, and CFFO/TR, have the ability to meet their financial obligations |
Brédart (2014) | Profitability ratio, as the value of the ratio net income/total assets during the last accounting year before the filing of the reorganization process. Liquidity ratio, as the value of the current ratio in the last accounting year before the filing of resolution proceedings Solvency ratio, as the value of the ratio total equity/total assets during the last accounting year before the filing of the reorganization process. | Logistic regression | (1) The indicators of profitability, liquidity, and solvency serve as reliable predictors for identifying potential financial distress. (2) The level of accuracy achieved is 83.82%. |
Serrano-Cinca and Gutiérrez-Nieto (2013) | Return on assets earnings (INTINCY) Cost of financing asset earnings (INTEXPY) Net interest margin (NIMY) Interest free income to profitable assets (NONIIY) Interest free expenses on speculative assets (NONIXY) Net operating income on assets (NOIJY) Return on assets (ROA) pre-tax return on assets (ROAPTX) Return on equity (ROE) retained earnings on average equity (ROEINJR) The efficiency index, EEFFR, is designed to indicate that as the index value increases, the bank’s efficiency decreases. To measure delinquency, the NPERFV ratio is used, which compares assets that are 90 days or more delinquent to total assets. Net loans and leases on deposits (LNLSDEPR), Total equity capital as a percent of total assets (EQV) 3 asset weighted indices (RBC1AAJ, RBC1RWAJ and RBCRWAJ) | Partial least squares discriminant analysis (PLS-DA) | (1) The level of accuracy achieved is 95.02% (2) Tolerance to multicollinearity |
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Billios, D.; Seretidou, D.; Stavropoulos, A. The Power of Numerical Indicators in Predicting Bankruptcy: A Systematic Review. J. Risk Financial Manag. 2024, 17, 433. https://doi.org/10.3390/jrfm17100433
Billios D, Seretidou D, Stavropoulos A. The Power of Numerical Indicators in Predicting Bankruptcy: A Systematic Review. Journal of Risk and Financial Management. 2024; 17(10):433. https://doi.org/10.3390/jrfm17100433
Chicago/Turabian StyleBillios, Dimitrios, Dimitra Seretidou, and Antonios Stavropoulos. 2024. "The Power of Numerical Indicators in Predicting Bankruptcy: A Systematic Review" Journal of Risk and Financial Management 17, no. 10: 433. https://doi.org/10.3390/jrfm17100433
APA StyleBillios, D., Seretidou, D., & Stavropoulos, A. (2024). The Power of Numerical Indicators in Predicting Bankruptcy: A Systematic Review. Journal of Risk and Financial Management, 17(10), 433. https://doi.org/10.3390/jrfm17100433