Bankruptcy prediction is the art of predicting
bankruptcy and various measures of
financial distress
Financial distress is a term in corporate finance used to indicate a condition when promises to creditors of a company are broken or honored with difficulty. If financial distress cannot be relieved, it can lead to bankruptcy. Financial dist ...
of public firms. It is a vast area of finance and accounting research. The importance of the area is due in part to the relevance for
creditor
A creditor or lender is a party (e.g., person, organization, company, or government) that has a claim on the services of a second party. It is a person or institution to whom money is owed. The first party, in general, has provided some property ...
s and
investor
An investor is a person who allocates financial capital with the expectation of a future Return on capital, return (profit) or to gain an advantage (interest). Through this allocated capital most of the time the investor purchases some specie ...
s in evaluating the likelihood that a firm may go bankrupt.
The quantity of research is also a function of the availability of data: for public firms which went bankrupt or did not, numerous accounting ratios that might indicate danger can be calculated, and numerous other potential explanatory variables are also available. Consequently, the area is well-suited for testing of increasingly sophisticated, data-intensive
forecasting
Forecasting is the process of making predictions based on past and present data. Later these can be compared (resolved) against what happens. For example, a company might estimate their revenue in the next year, then compare it against the actual ...
approaches.
History
The history of bankruptcy prediction includes application of numerous statistical tools which gradually became available, and involves deepening appreciation of various pitfalls in early analyses. Research is still published that suffers pitfalls that have been understood for many years.
Bankruptcy prediction has been a subject of formal analysis since at least 1932, when FitzPatrick published a study of 20 pairs of firms, one failed and one surviving, matched by date, size and industry, in ''The Certified Public Accountant''. He did not perform statistical analysis as is now common, but he thoughtfully interpreted the ratios and trends in the ratios. His interpretation was effectively a complex, multiple variable analysis.
In 1967,
William Beaver applied
t-tests
A ''t''-test is any statistical hypothesis test in which the test statistic follows a Student's ''t''-distribution under the null hypothesis. It is most commonly applied when the test statistic would follow a normal distribution if the value o ...
to evaluate the importance of individual accounting ratios within a similar pair-matched sample.
In 1968, in the first formal multiple variable analysis,
Edward I. Altman
Edward I. Altman (born June 5, 1941) is a Professor of Finance, Emeritus, at New York University's Stern School of Business. He is best known for the development of the Altman Z-score for predicting bankruptcy which he published in 1968. Prof ...
applied
multiple discriminant analysis
Multiple Discriminant Analysis (MDA) is a multivariate dimensionality reduction technique. It has been used to predict signals as diverse as neural memory traces and corporate failure.
MDA is not directly used to perform classification. It merely ...
within a pair-matched sample. One of the most prominent early models of bankruptcy prediction is the
Altman Z-score
Example of an Excel spreadsheet that uses Altman Z-score to predict the bankruptcy.html" ;"title="probability that a firm will go into bankruptcy">probability that a firm will go into bankruptcy within two years
The Z-score formula for predic ...
, which is still applied today.
In 1980,
James Ohlson applied
logit regression in a much larger sample that did not involve pair-matching.
Modern methods
Predicting bankruptcy of companies has been a hot subject of focus for many economists. The rationale for developing and predicting the financial distress of a company is to develop a predictive model used to forecast the financial condition of a company by combining several econometric variables of interest to the researcher. The study sought to introduce deep learning models for corporate bankruptcy forecasting using textual disclosures. The study constructed a comprehensive study model for predicting bankruptcy based on listed companies in Kenya. The study population included all 64 listed companies in the Nairobi Securities Exchange for ten years. Logistic analysis was used in building a model for predicting the financial distress of a company. The findings revealed that asset turnover, total asset, and working capital ratio had positive coefficients. On the other hand, inventory turnover, debt-equity ratio, debtors turnover, debt ratio, and current ratio had negative coefficients. The study concluded that inventory turnover, asset turnover, debt-equity ratio, debtors turnover, total asset, debt ratio, current ratio, and working capital ratio were the most significant ratios for predicting bankruptcy (Ogachi, D.; Ndege, R.; Gaturu, P.; Zoltan, Z. (2020)
Comparison of differing approaches
The latest research within the field of Bankruptcy and Insolvency Prediction compares various differing approaches, modelling techniques, and individual models to ascertain whether any one technique is superior to its counterparts.
Jackson and Wood (2013) is one of many reviews of the literature to date, and included an empirical evaluation of 15 popular models from the existing literature. These models range from the univariate models of Beaver through the multidimensional models of Altman and Ohlson, and continuing to more recent techniques which include option valuation approaches. They find that models based on market data - such as an option valuation approach - outperform those earlier models which rely heavily on accounting numbers.
Zhang, Wang, and Ji (2013) proposed a novel
rule-based system
In computer science, a rule-based system is used to store and manipulate knowledge to interpret information in a useful way. It is often used in artificial intelligence applications and research.
Normally, the term ''rule-based system'' is appli ...
to solve bankruptcy prediction problem. The whole procedure consists of the following four stages: first, sequential
forward selection
In statistics, stepwise regression is a method of fitting regression models in which the choice of predictive variables is carried out by an automatic procedure. In each step, a variable is considered for addition to or subtraction from the set of ...
was used to extract the most important features; second, a rule-based model was chosen to fit the given dataset since it can present physical meaning; third, a genetic
ant colony algorithm (GACA) was introduced; the fitness scaling strategy and the chaotic operator were incorporated with GACA, forming a new algorithm—fitness-scaling chaotic GACA (FSCGACA), which was used to seek the optimal parameters of the rule-based model; and finally, the
stratified K-fold cross-validation technique was used to enhance the generalization of the model.
There are a few sources where data can be obtained for bankruptcy prediction. Among others the UCLA-LoPucki Database, which looks at Large US Company bankruptcies from Oct-97 to present and the Federal Judicial Center that looks at bankruptcies from 2008. Some financial providers have started to use these datasets with machine learning models to attempt to predict future bankruptcy risks.
This is an emerging field and we expect that future research will look into using unstructured financial data and alternative data sources in prediction models.
References
*
FitzPatrick 1932
*Beaver 1966. Financial ratios predictors of failure. ''
Journal of Accounting Research
The ''Journal of Accounting Research'' is a leading peer-reviewed academic journal associated with the University of Chicago. It was established in 1963 and is published by Wiley-Blackwell on behalf of the Accounting Research Center (Formerly the I ...
, 4 (Supplement), p. 71-111.
*Beaver 1968
*
*Ohlson, James. 1980.
*
*Zmijewski, Mark E. 1984. "Methodological issues related to the estimation of financial distress prediction models". ''
Journal of Accounting Research
The ''Journal of Accounting Research'' is a leading peer-reviewed academic journal associated with the University of Chicago. It was established in 1963 and is published by Wiley-Blackwell on behalf of the Accounting Research Center (Formerly the I ...
'' 22 (Supplement), p. 59-86.
*
* {{cite thesis , last=Danilov , first=Konstantin , title=Corporate Bankruptcy: Assessment, Analysis and Prediction of Financial Distress, Insolvency, and Failure , journal=SSRN Working Paper Series , url=http://www.ssrn.com/abstract=2467580, publisher=Elsevier BV , year=2014 , issn=1556-5068 , doi=10.2139/ssrn.2467580 , hdl=1721.1/90237 , type=Thesis , hdl-access=free
Ogachi, D.; Ndege, R.; Gaturu, P.; Zoltan, Z. Corporate Bankruptcy Prediction Model, a Special Focus on Listed Companies in Kenya. J. Risk Financial Manag. 2020, 13, 47. https://doi.org/10.3390/jrfm13030047
Bankruptcy
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