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The prediction of financial distress holds significant importance for the stakeholders of a
company, as it helps them to proactively implement preventive measures such as policy
adjustments or restructuring both operational and financial frameworks. The timely
prediction serves as a catalyst for informed decisions encompassing investments, credit
extensions, bank loan approvals, and more. The occurrence of corporate insolvency
imposes considerable costs upon diverse stakeholders, including debt providers,
shareholders, suppliers, employees, auditors, customers, and others. Therefore, early
detection plays a crucial role in enabling these stakeholders to make well-informed choices
that drive effective decision-making processes. Henceforth, the focal point of this research
resides in the prediction of corporate insolvency within the business entities of Bangladesh.
The significance of this study is that it demonstrates the necessity of using prediction
models to forecast the financial condition of entities classified under the Z category and
OTC. It also emphasizes the importance of implementing alternative measures to protect
the interests of various stakeholders. This is crucial because general investors are unaware
of the true financial health of companies transferred to the Z category or OTC, as explained
by the BSEC. Simply designating firms as Z category or OTC is insufficient. Despite being
classified as Z category by the regulator, these firms do not experience any impact on
trading and there is no reflection in stock prices. Instead, there is an upward movement in
the prices of certain low-quality securities, which poses a risk to general investors when
price corrections occur. Consequently, the capital market can become unstable.
Additionally, there have been instances where the regulator was unable to trace certain
companies in the OTC, which is detrimental to general investors. Therefore, utilizing a
failure prediction model for distressed firms is necessary to initiate effective actions that
protect the interests of general investors.
When a firm reaches a distressed level that warrants insolvency declaration, there must be
a robust infrastructure for bankruptcy, enabling immediate filing to mitigate losses
associated with restructuring procedures or the bankruptcy process. Otherwise, if there is a
delay in the bankruptcy or restructuring procedure, it creates three impacts (Grigaraviˇcius,
2003). First, it increases direct and indirect spending related to bankruptcy. Second, it
decreases the recovery potentials of the indebted firms. Third, it reduces the
reimbursements of obligations to creditors. Hence, it is imperative for the distressed firm to
promptly initiate the bankruptcy appeal during the initial stage of their indebtedness;
otherwise, these issues will exacerbate. To avert failure, it is crucial for the Chief
Executive Officer to grasp the nature and facets of failure comprehensively. Subsequently,
corrective measures need to be implemented to prevent such failure. Mistakes should be
acknowledged, and precautionary actions should be taken to safeguard the organization
from future errors.
Based on the news report from bdnews24 (Only 2 out, 2006), it was revealed that a mere
two out of thirty-three delisted companies opted to repurchase stocks from the public
between 1994 and 2006. This particular situation serves as a testament to the fact that only
a small fraction, six percent to be precise, of shareholders were able to reclaim their
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investments through buyback arrangements initiated by the sponsor or director.
Consequently, a staggering 94% of shareholders find themselves in a precarious position,
their interests in these delisted companies left unaddressed. Hence, this thesis contends that
the governing authority ought to adopt a more proactive approach rather than simply
designating such firms as Z category or OTC. Instead, the authority should employ a
failure prediction model to identify companies facing severe financial distress and take
necessary steps to liquidate them forcibly. Following the mandatory liquidation, the funds
recovered should be promptly redistributed to the shareholders and other stakeholders who
are rightfully entitled to receive their dues.
This study contributes in three aspects by addressing the following three gaps. First, the
inclusion of OTC companies in predicting corporate failure fills a gap in this field of
research, as no prior study has utilized data from OTC companies. Second, this study also
addresses the gap of incorporating the recent data of Z category companies, as the previous
study by Chowdhury & Barua (2009) only covered data up to 2009. In contrast, our study
includes the most recent data of Z category firms, spanning up to 2019. Third, this study
addresses the research gap by utilizing forward logistic regression to identify the most
influential predictors in predicting corporate failure. The reason for choosing this method is
the limited number of studies conducted using it. Therefore, this research will make a
valuable contribution to the existing literature.
There are two primary aims of this study: 1. To find out whether there are any financially
unhealthy firms in the Z category and OTC companies; 2. To identify the predictors that
impact the financial failures of the Z category and OTC companies. There are two
secondary aims of this study: 1. To understand the financial characteristics of the Z
category and OTC companies; 2. To determine whether the characteristics of financially
unhealthy companies in the Z category and OTC differ significantly from those in
financially healthy positions.
As a data collection method, primary data is adopted. For this purpose, the author
contacted the particular stakeholders of Bangladesh Securities and Exchange Commission
(BSEC) and Dhaka Stock Exchanges (DSE) for the data of failed or liquidated companies.
But the concerned officers of both the offices do not maintain any data related to those
companies. Both the authorities keep only data of active companies whose shares are
trading on the market i.e., the stock exchange of Bangladesh. Later the author asked for the
data of Over-The-Counter (OTC) companies because the annual reports are not available
on the website of the OTC companies. Finally, the author decided to continue this study
using the data of OTC companies because no study was done on the companies in the
Over-the-Counter (OTC) trading platform. Besides using the data of OTC companies, this
study will also include the data of Z-category companies. Although there was a previous
study (Chowdhury &Barua, 2009) on Z-category companies, this study will consider the
recent data for those companies.
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As a means of collecting data, the researcher has employed primary data collection
methodology. For that purpose, the author reached out to the specific stakeholders
associated with the Bangladesh Securities and Exchange Commission (BSEC) and the
Dhaka Stock Exchanges (DSE) in order to obtain data pertaining to companies that have
experienced failure or liquidation. But, it was discovered that the officials in both offices
do not preserve any records pertaining to such companies. Instead, they exclusively
preserve data on active companies whose shares are actively traded on the Bangladeshi
stock exchange market. Then, the author requested the data concerning Over-The-Counter
(OTC) companies, as the annual reports of these companies were not available on their
respective websites. Consequently, the author resolved to proceed with the study utilizing
data from OTC companies, primarily due to the absence of previous research conducted on
companies operating within the Over-the-Counter (OTC) trading platform. In addition to
utilizing data from OTC companies, this study will also incorporate data from Z-category
companies. While a prior study (Chowdhury & Barua, 2009) did examine Z-category
companies, this present study will focus on the most recent data available for Z-category
companies.
To collect data, a sample of 35 companies was taken out of 46 Z-category companies. The
selection was based on the availability of annual reports on the websites of those
companies. Data from 2007 to 2019 were collected, considering their availability.
Additionally, data from 13 companies in the OTC market were collected through hardcopy
records obtained from Dhaka Stock Exchange. In total, the study utilized a dataset
comprising 217 firm years, with 26 firm-years originating from OTC companies. Among
the Z-category firms, there were 191 firm-years of data, with 142 firm-years belonging to
manufacturing and service providing companies, while the remaining 49 firm-years
pertained to bank and non-bank financial institutions (NBFI).
In the analysis section of this study, the financial characteristics of the Z category and OTC
companies are determined through the calculation of descriptive statistics. Subsequently,
Altman's (1968) model is employed to calculate the Z score in order to determine the
presence of failed, grey, and non-failed positions within the Z category and OTC
companies. Subsequently, the application of One Way ANOVA and Independent Samples
T-Test helps in identifying significant differences in the mean values of the financial
position predictors among the failed, grey, and non-failed statuses. Finally, through the
utilization of Forward Logistic Regression, the factors or predictors with the greatest
impact on the financial failures of the Z category and OTC companies are determined.
This research reveals that the overall failure rate among companies categorized as Z is
72%. These findings align with the results of a previous study conducted by Chowdhury
and Barua (2009), which reported a 77% failure rate among companies. In a more specific
context, an alarming 98% of Bank and Non-Bank Financial Institutions in the Z category
are experiencing failure. This finding mirrors the conclusions drawn from a study
conducted by Hamid et al. (2016), where a substantial 93% of companies were found to be
in a failed position.
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In order to fulfill the first primary objective of the study in assessing the financial health of
firms categorized as Z and those traded over-the-counter (OTC), the results reveal
significant insights. Manufacturing and servicing companies in the Z category encountered
a failed financial position in 59% of firm years, while 19% of firm years were classified as
non-failed and 22% as grey. Conversely, Z category banks and non-bank financial
institutions experienced a failed financial position in 98% of firm years, with a mere 2%
categorized as grey and none falling under the non-failed category. Regarding OTC
manufacturing and servicing companies, 92% of firm years faced a failed financial
position, while 8% were deemed as grey. Similar to Z category financial institutions, no
firm years were classified as non-failed. These findings unequivocally indicate that Z
category banks and non-bank financial institutions are entrenched in an exceedingly
weakened state.
In order to attain the second primary objective of this study, which involves identifying the
predictors with the greatest impact on predicting financial failures of Z category and OTC
companies, the application of Forward Logistic Regression has yielded significant
findings. It has been observed that when considering the single impact, a substantial 78.0%
correct variation in the dependent variable (i.e., failed and non-failed positions) can be
explained by the ratio of Earnings before Interest and Taxes to Total Assets. When the
combined impact is taken into account, the dependent variable's correct variation is
explained by four independent variables (X1, X3, X4, X5), amounting to 95.8%. Thus, it
can be deduced that the prediction of failure can be enhanced by considering the following
variables: X1 (Current assets minus current liabilities divided by total assets), X3 (Earnings
before interest and taxes divided by total assets), X4 (Book value equity divided by book
value of total debt or liability), and X5 (Sales divided by total assets). Furthermore, it has
been determined that X2 (Retained Earnings divided by total assets) does not serve as a
reliable predictor when it comes to forecasting corporate failure.
The findings derived from the secondary objectives of this study, which aimed to explore
the financial characteristics of Z category and OTC (Over-the-Counter) companies, reveal
imperative insights. When examining the gross financial data of Z category companies, the
descriptive statistics demonstrate that the minimum balance of Retained Earnings, Earnings
before Interest and Taxes, and Book Value of Equity are all situated in negative territory.
Furthermore, the mean value of Retained Earnings also showcases a negative figure.
Conversely, when analyzing the ratios-based descriptive statistics of Z category
companies, we observe that the mean value of the net working capital ratio and the
Retained Earnings/Total assets ratio both exhibit negative figures. Remarkably, the
descriptive statistics for OTC companies exhibit similar trends to those of Z category
companies.
In order to address another secondary objective of the study, which involves discerning
notable distinctions in the attributes between financially unstable companies classified
under the Z category and OTC, and those in a sound financial position, two statistical tests
were employed: the Independent Samples T-Test and One Way ANOVA. The results
indicate that when applying the Altman Z score to Z category Bank and NBFI companies
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as well as OTC companies, only two outcome groups, namely "failed" and "grey," were
observed, with no instances of non-failed firm years being identified. To compare the
means of these two groups, the Independent Samples T-Test was utilized. Based on the
findings from the Independent Samples T-Test, it was determined that only one ratio,
specifically EBIT/Total assets, exhibited significant differences when comparing the
"failed" and "grey" firms. On the other hand, the outcomes of the one-way analysis of
variance (ANOVA) reveal the following mean values for X1: -0.0773 for Failed firms,
0.4152 for Non-Failed firms, and 0.2605 for Grey firms. Consequently, it can be inferred
that Failed firms tend to exhibit a negative mean value for the net working capital ratio.
Similarly, the mean values for X2 are as follows: -0.3204 for Failed firms, 0.1915 for Non
Failed firms, and 0.1043 for Grey firms. Hence, it can be deduced that failed firms tend to
display a negative mean value for the Retained Earnings/Total assets ratio. Moreover, the
mean values for X3 are 0.0008 for failed firms, 0.0725 for Non-Failed firms, and 0.0786
for Grey firms. Thus, it can be inferred that the mean value of the Earnings before interest
and taxes/Total Assets ratio for failed firms tends to be considerably lower compared to
Non-Failed firms. Similarly, the mean values for X4 are 0.9879 for failed firms, 10.9985
for Non-Failed firms and 1.6087 for Grey firms. Consequently, it can be deduced that the
mean value of the Book value equity/Book value of total debt or Liability ratio for failed
firms tends to be significantly lower compared to Non-Failed firms. However, in terms of
X5 (Sales/Total assets), there are no significant differences observed among Failed, Non
Failed, and Grey firms. Hence, this finding indicates that only one ratio, specifically
Earnings before interest and taxes divided by Total assets, exhibits significant differences
when comparing Failed and Grey firms. It is worth noting that no firm-year falls under the
category of "Non-Failed" within the OTC companies.
In conclusion, the study asserts that the mere classification of certain firms into either the Z
category or OTC category falls short in addressing the underlying issues. The findings of
the study indicate a staggering failure rate of up to 98% and 92% for firms in the Z
category and OTC category, respectively. Consequently, it becomes imperative to employ
a failure prediction model in order to identify extremely distressed firms and implement
proactive measures to safeguard the interests of general investors and other stakeholders.
When a firm reaches a state of distress that necessitates an insolvency declaration, it
becomes crucial to establish a robust infrastructure for bankruptcy proceedings. This would
enable swift filing, thereby mitigating losses associated with the restructuring or
bankruptcy procedures. Based on the findings of the study, it is recommended that
employing Forward Logistic Regression can effectively uncover the key variables that play
a significant role in predicting corporate failure. These insights can be invaluable for
decision makers, enabling them to identify the factors with the greatest predictive power
for corporate failure. |
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