firms in distress, a survival model analysis
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Firms in financial distress, a survival model analysis
Nongnit Chancharata, Pamela Davyb, Michael McCraecand Gary Tiand*
a, b and d - School of Accounting and Finance, University of Wollongong
c - School of Mathematics and Applied Statistics, University of Wollongong
ABSTRACT
The paper aims to a) identify the probability of corporate survival in a given time frame based
on the state of the financial health of a company and b) investigate the effect of financial
ratios, market based variables and company specific variables (including company age, size
and squared size) on corporate financial distress. A sample of 1,117 publicly listed Australian
companies was examined over the period 1989 to 2005 using a survival analysis technique in
Cox proportional hazards form. The results support the usefulness of financial ratios, market
based variables and company size as predictors of financial distress. Financially distressed
companies have lower profitability, higher leverage, lower past excess returns and larger size
compared to active companies. However, company age lack significance in explaining
financial distress.
KEYWORDS: Financial Distress, Survival Analysis, Cox Proportional Hazards Model
*Corresponding Author, School of Accounting and Finance, University of Wollongong, Northfields Avenue,NSW 2522, Australia. E-mail: gtian@uow.edu.au.
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1.INTRODUCTION
The purpose of this paper is to identify the probability of corporate survival in a given time
frame and to examine the effect which financial ratios and other variables may exert on
corporate financial distress. Interest in corporate financial distress prediction has grown
rapidly in recent years with the global increase in the number of corporate collapses. Australia
has also experienced a series of corporate collapses since the early 1990s. Notable failures
include HIH Insurance, OneTel, and Ansett Airlines in 2001, and most recently FIN Corp in
2007.
The failure or bankruptcy of financially distressed companies often entail significant direct
and indirect costs to many stakeholders; including shareholders, managers, employees,
lenders and clients. For example, the failure of Australia's second largest insurance company,
HIH Insurance, in 2001 represents the largest corporate collapse in Australia's history. The
collapse of HIH entailed huge individual and social costs. The deficiency of the group was
estimated to be between $3.6 billion and $5.3 billion, 200 permanently disabled people were
left with no regular income payments, retirees with superannuation in HIH shares saw their
investment disappear and several non-profit organizations were liquidated by the collapse
(Commonwealth of Australia, 2003). Many of these costs may be avoided if financially
distressed companies can be identified well before failure and estimates made of their survival
probability within a given time frame.
The application of failure prediction models such as Survival Analysis may assist in the
understanding of the symptoms of financial distress, the dynamics of corporate failure and
permit the estimation of corporate survival probabilities based on a set of variables
symptomatic of corporate financial distress in a manner not available under previously used
techniques.
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Previous studies of corporate financial distress prediction use a variety of methodologies
such as univariate analysis, multivariate discriminant analysis (MDA), probit and logit
analysis and artificial neural networks (ANN). While often effective in predicting ultimate
corporate failures, these approaches provide little analysis or insight into the dynamics of
corporate failure. As static predictors, they assume a steady state progression of financial
distress and omit time to failure as an integral factor in corporate distress analysis. While
these models estimate broad prediction of likely corporate failure, they do not allow
estimation of survival probabilities or the time to corporate failure.
To overcome these short-comings, this study uses the Cox proportional hazards form of
survival analysis as a diagnostic tool for estimating the survival probabilities of financially
distressed firms and identifying significant signs or symptoms of such firms. The study
focuses on the construction and application of these diagnostic tools to financially distressed
firms to identify significant signs or symptoms of failed firms.
Our survival analysis is based on three main categories of covariates - financial ratios,
market based data and company specific variables. We use a sample of all publicly listed
Australian companies except these in the financial sector and cover the period 1989-2005.
Financially distressed companies within the sample are defined as companies that enter into
an external administration process which includes one of the following states: (1) voluntary
administration; (2) a scheme of arrangement; (3) receivership; or (4) liquidation.
The study has four objectives as follows. First, the estimation of the probability of
corporate survival in a given time frame for financially distressed firms e.g. a two year
survival probability. Second, the determination of the effectiveness of financial ratios as
symptoms for identifying financially distressed companies. Thirdly, an examination of the
effectiveness of market based data as the predictors of corporate financial distress. The last
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objective is to determine the usefulness of company-specific variables such as age, size and
squared size in predicting the probability of corporate endurance.
Our study differs from previous studies in a number of aspects. Unlike previous studies we
allow for time-varying covariates in the Cox proportional hazards model rather than merely
using time-invariant covariates as in Luoma and Laitinen (1991) and Henebry (1996; 1997).
This features allows for deterioration in the covariates of financial ratios, market-based data
and company specific variables over time, since it is unlikely that their values or effects
would remain constant with the progression of the corporate failure process (Luoma and
Laitinen, 1991). LeClere (2005) suggests that the potential proportional hazards models with
time-varying covariates outperforms proportional hazards models with time-invariant
covariates since it allows testing of the sensitivity of the proportional hazards model to the
choice of covariate time-dependence in financial distress application.
Secondly, we include multiple sets of determinants of financial distress rather than just one
set as is common in previous studies. For example, Hill, Perry and Andes (1996), Ward and
Foster (1997), DeYoung (2003), Nikitin (2003) and Laitinen (2005) use only financial ratios
as financial distress predictors; while Altman (1969), Aharony, Jones and Swary (1980),
Altman and Brenner (1981a), Borenstein and Rose (1995) and Fama and French (1995) use
only market based covariates. We allow for a combination of financial ratios, market based
data and company specific variables in the Cox proportional hazards model to dynamically
analyze the potential influence of these variables on financially distressed Australian firms.
The inclusion of multiple sets of covariates also permits analysis of the interaction of several
potential factors on corporate financial distress.
Thirdly, this paper covers a longer time period than previous studies. We test the
hypotheses over a 17 year from 1989 to 2005, as compared to the 8 year period analysed by
Crapp and Stevenson (1987), the five year periods used by Henebry (1996; 1997) and only 3
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years in Chen and Lee (1993) and LeClere (2002). We expect that using longer data time
periods in the Cox proportional hazards model will produce more robust results.
Finally, to our knowledge, Crapp and Stevenson (1987) is the only other study which uses
survival analysis to examine financial distress in an Australian corporate context. That study
included financial ratios and economic influences but omitted market based data and limited
the sample to New South Wales Credit Unions in the banking sector; whereas our sample
includes market based data as a covariate and covers all publicly listed Australian companies.
These features provide an expanded application of our dynamic diagnostic tool which extends
the literature regarding corporate financial distress.
Our results show that the Cox proportional hazards model can provide meaningful
estimates of corporate survival probabilities within a given time frame. It also supports the
effectiveness of financial ratios, market based variable and company size as potential
predictors of financial distress. Financially distressed companies appear to exhibit lower
profitability, higher leverage ratios, lower historic excess returns and larger size than active
companies. There was no evidence to support the significance of company age as predictor of
the probability of corporate failure.
The remainder of the paper is organized as follows. The next section reviews the
methodologies and financial distress predictors used in previous studies. Section three then
describes our data and method of analysis. The empirical results are presented and analysed in
Section four. Section four discusses the implications of the results for our initial hypotheses.
The conclusions, limitations of the analysis and possible future extensions are discussed in
Section five.
2.LITERATURE REVIEW2.1METHODOLOGIES IN FINANCIAL DISTRESS STUDIES
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There exist a large number of corporate financial distress prediction models based on various
types of methodologies. Beaver (1966) pioneered the development of univariate analysis as a
model for corporate failure prediction. Beaver (1966) found that the model can predict failed
firms for at least five years prior to failure. However, since univariate analysis uses individual
financial ratios as a single predictor of failure, the model may give inconsistent and confusing
classifications results for different ratios on the same firm (Altman, 1968).
To overcome the problem, Altman (1968) applied multivariate discriminant analysis
(MDA) which can handle multiple financial ratios in predicting company failure. In Altman
(1968) study, five financial ratios include (1) working capital to total assets (2) retained
earnings to total assets (3) earnings before interest and taxes to total assets (4) market value
equity to par value of debt and (5) sales to total assets found to be the best predictor in
corporate bankruptcy prediction model. The model is very popular called Z score model but
the main criticism of MDA is its potential violation of the assumption about the multivariate
normal distribution of independent variables (Eisenbeis, 1977; Mcleay and Omar, 2000).
Ohlson (1980) then used probit and logit analysis an approach that avoided this criticism.
In Australia, Castagna and Matolcsy (1981).pioneered the study of corporate financial
distress and failure using a linear and quadratic discriminant structure with ten variables. They
found support for the strong potential for such models, as previously developed and applied in
the U.S.A., to assist Australian analysts and managers.
Izan (1984) extended study of the failure classification problem in Australia by using a
larger sample of companies and by standardizing financial ratios by the respective firms
industry medians. Their final model was quite similar to the Altman (1968) model. They
concluded their resultant model is sufficiently robust to be applicable to a cross-section of
firms and industries.
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Subsequent studies include Lincoln (1984), Crapp and Stevenson (1987), Houghton and
Smith (1992), Liu (1993), Ryan (1994), Seow (1998), Gadenne and Iselin (2000), Tan and
Dihardjo (2001) and Jones and Hensher (2004).
An alternative approach is that of artificial neural networks (ANN). Several studies report
the superiority of the ANN to other methods in predicting financial distress or bankruptcy
areas such as Charalambous, Charitou and Kaourou (2000) and Tan and Dihardjo (2001).
However, ANNs are disadvantaged by the black box problem. That is, the technique does
not reveal how the network classifies companies into the failing and non-failing group
(Hawley, Johnson and Raina, 1990).
Since all of these classical methods assume a steady state for failure process, the models
may be classified as single period or static models (Shumway, 2001). The models assume
that the time from classification as distressed to actual corporate failure occurs within a single
period. However, this assumption is usually violated because financial distress does not occur
immediately after classification, but is preceded by the deterioration in a firms financial
health over a number of years (LeClere, 2000).
Furthermore, these static or single period models say little about either the dynamics of
corporate failure, the progression of the corporate disease or the probable time frame for
corporate failure. These disadvantages have prompted the emergence of dynamic techniques
borrowed from other disciplines to analyse the dynamics of corporate failure and provide
survival probabilities.
One such technique is survival analysis. Survival analysis is widely used in diverse
medical fields for the symptomatic identification of potentially fatal diseases and estimation
of survival probabilities based on historic data. Survival analysis uses the Cox proportional
hazards model to estimate survival probabilities and failure times. In the corporate distress
context, survival analysis uses independent or symptom variables (covariates) such as
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financial ratios, company specific factors and environmental state variables as symptoms
that help identify the nature and degree of financial distress. The severity of these symptoms,
when used in conjunction with actual historical data on previously failed companies, allows
estimation of corporate survival probabilities within a given time frame.
Survival analysis techniques form the basis for a number of studies in financial distress
research area especially in the USA and European countries. For example in the USA, by
using Cox regression model to identify the performance of new USA companies after entering
the business, Audretsch and Mahmood (1995) suggest that the likelihood of a new business
surviving is shaped not only by the underlying technological conditions but also by business
specific characteristics such as ownership status and size. Henebry (1996) uses Cox
proportional hazards model to determine whether adding cash flow information will improve
current bank failure prediction methods. Wheelock and Wilson (2000) utilizes competing
risks hazards model to identify the characteristics that make individual USA banks more
likely to fail or acquired. Shumway (2001) uses hazard model to compare the hazard model to
static model by employing Altmans 1968 variables, Zmijewskis 1984 variables and market-
driven variables for 300 bankrupt companies in USA context. The author found that
combining market-driven variables with accounting ratios provide more accuracy model.
DeYoung (2003) uses a split-population model to examine failure patterns and failure
determinants for new banks in USA and suggests that the financial performance o the typical
de novo bank follows a life cycle pattern. Partington et al.(2006) utilizes Cox proportional
hazards model to predict the duration of Chapter 11 bankruptcy and the payoff to
shareholders. These studies show the potential of survival analysis techniques as the
methodology in predicting corporate failure.
In European countries, Luoma and Laitinen (1991) use Cox proportional hazards model to
consider the application of survival analysis in predicting the failure of Finnish industrial and
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retailing companies and to compare the results with MDA and logistic model. However, the
study reports that the classification result of survival analysis is outperformed by MDA and
logistic model. Rommer (2004) utilizes competing risks model to predict the Danish firms
that end up in financial distress. Types of exit are divided into financial distress, voluntary
liquidation and merger or acquisition. The results show that it is important to distinguish
between exit types. Consequently, Rommer (2005) compares the financial distress predictors
between French, Italian and Spanish companies using competing risks model. Other corporate
failure studies using survival analysis techniques in European countries context such as Prantl
(2003), Bhattacharjee et al.(2004), Porath (2004) and Laitinen (2005).
There are a few literatures which investigate corporate financial distress utilizing survival
analysis in Asian context. For example, Honjo (2000) employs multiplicative hazards model
for investigating business failure of new firms in Japanese manufacturing industry whereas
Raj and Rinastiti (2002) use Cox proportional hazards model to examine the failed banks in
Asia during 1997 Asian crisis. Some of prior corporate failure or bankruptcy studies focus the
analysis on specific industry sector. Chen and Lee (1993) focus the study on oil and gas
industry using Cox proportional hazards model. Similarly, Lee and Urrutia (1996) also scope
the analysis in specific industry which is property liability insurance industry.
However, in Australia, the technique is not well utilized despite the potential of this
technique in finance research area. To our knowledge, Crapp and Stevenson (1987) is the only
study of financial distress prediction in the Australian context that uses survival analysis. In
their paper, 94 failed and 212 surviving New South Wales Credit Unions are examined by
using life table method which is one approach under survival analysis techniques. They
develop a method for selecting variables by specifying the relative importance of those
variables as input for failure models and estimate the probability of failure of organizations at
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a point in time. Their results indicate that the variables which are relatively important in
explaining failure are income capacity, operating efficiency and loan growth.
2.2FINANCIAL DISTRESS PREDICTORS
According to Hossari and Rahman (2005), empirical investigations of corporate failure may
be classified into two categories include the studies that do not utilize financial data and those
that do utilize financial data which may be further classified into those that utilize non-ratio
financial data and those that utilize financial ratios in modeling corporate collapse.
The use of financial ratios to predict corporate failure or bankruptcy has been well
established since the original study of Beaver (1966). Most of the empirical research in this
area have used financial ratios and have been successful in discriminating between failed and
non failed firms. Regardless of the success of financial (accounting) ratio models, there is
criticism on using financial ratios for their window dressing issue. In other words, the firm
may use creative accounting to show better financial figure.
To overcome the criticism arise by using solely financial ratios in examining financially
distressed company, we additionally analyze the influence of market based data on firm
survival over time.
There are a number of studies employ market data for analyzing corporate bankruptcy such
as Aharony, Jones and Swary (1980) find differences in the behavior of total and firm-specific
variances in returns four years before formal bankruptcy is announced. Altman and Brenner
(1981a) suggest bankrupt firms experience deteriorating capital market returns for at least a
year prior to bankruptcy. Consistently, Clark and Weinstein (1983) suggest that there is
negative market returns at least three years prior to bankruptcy. Other studies such as
Mossman et al.(1998), Shumway (2001) and Turetsky and McEwen (2001) also support that
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there is the relationship between the market based data and the likelihood of corporate
financial distress.
Additionally, company specific variables include company age, company size and squared
size are also employed in the study. Prior studies suggest that company age and size affect its
endurance. The younger or smaller firms are more likely to fail than established or bigger
firms as they did not have sufficient experience in the business, low network connection and
limited information. Larger firm are expected to better manage and better protect from
financial distress (Audretsch and Mahmood, 1995; Honjo, 2000).
However, Rommer (2004) points out that the effect of age on firms exit is bell-shaped.
When the firms are young they have not yet learned their own potential and the probability of
exit is low. As time passes the firms learn about their own profitability potential and the firms
either expand, contract or exit the business. In addition, according to Rommer (2004) there are
two hypotheses regarding the effect of size on the probability of entering financial distress.
The first hypothesis suggests that the effect firm size on the likelihood of financial distress is
nearly U-shaped. Small firms have a higher probability of entering financial distress because
they are not so resistant to the shocks they might encounter and the large firms have a high
probability of entering financial distress because they might have inflexible organizations,
problems with monitoring managers and employees and difficulties with providing efficient
intra-firm communication. The second hypothesis is that the probability of financial distress is
a decreasing function of firm size.
We use logarithm of total assets as the proxy for size of the company. To test for
nonlinearities relationship between company size and the likelihood of financial distress, the
square of company size is also include in the analysis. The number of years since registration
is used as the proxy for company age to test whether company-specific variables; age is a
useful factor in predicting the probability of corporate endurance.
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3.DATA AND METHODOLOGY
3.1METHODOLOGY:SURVIVAL ANALYSIS TECHNIQUE
Survival analysis is a class of statistical method for studying the occurrence and timing of
events. In survival analysis, an event is defined as a qualitative change that can be situated
in time (Allison, 1995). Since companies may state from healthy to financial distress and
onto failure or bankruptcy, the event of interest in this study is defined as a company
entering into a financial distressed state.
But these changes usually occur over a time horizon of several periods rather than
instantaneously. In these cases, a methodology which allows for dynamic path analysis is
required if we are to analyse the progression of corporate failure. The expectation is that the
corporate disease of financial distress begins with identifiable initial conditions of the
symptom variables. The symptomatic conditions then change progressively over time as the
financial distress worsens.
Survival analysis is appropriate method used in this study as the method allows for time-
varying covariates and censored observations which are two key advantages of survival
analysis comparing to the traditional methods e.g. MDA, logit and probit models.
Time varying covariates are the explanatory variables that change with time. Financial
ratios, market-based data and company specific variables used in this study are kind of time
varying covariates as their values do change over time. It can be expected that the symptoms
of financial distress are observable from the deterioration of financial ratios or the effect of
such ratios on corporate failure do not stay constant over time (Luoma and Laitinen, 1991).
The major contribution of survival analysis method is estimation procedures that consider
changes in the value of covariates over time. Contrast to the traditional method which only
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examine the level of a variable at a given point in time as they simply views the observation at
a snap-shot in time (LeClere, 2000).
Censored observations are the observations that have never experienced the event during
the observation time. Censoring occur when the duration of the study is limited in time. In
this study, censored observations are the active companies as they have not entered into
financial distressed state during the study time. Survival analysis makes it possible to use the
information from these observations by including them as censored observations and use
maximum or partial likelihood method to provide consistent parameter estimates. This is
contrast to the traditional methods which can not incorporate information from censored
observations (Allison, 1995).
Survival analysis contains two key functions called the survivor function and hazard
function. The survival function, S(t), gives the probability that the time until the firm
experiences the event, T, is greater than a given time t. Given that T is a random variable
which defines the event time for some particular observation, then the survival function is
defined as.
)Pr()( tTtS >= (1)
Alternatively, the survival function can be defined as
exp( )( ) ( )0
XiS t S t i
= (2)
where S0(t) is an arbitrary unspecified baseline survival function. X is the vector of
explanatory variables and is the parameter which needs to be estimated.
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The hazard function defines the instantaneous risk that an event will occur at time t given
that the firm survives to time t. The hazard function is also known as the hazard rate because
it is a dimensional quantity that has the form of number of events per interval of time. The
hazard function is defined as:
t
tTttTtth
t
+
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proportional hazards model and maximum partial likelihood. The proportional hazards model
is represented as:
)exp()()( 0 ii Xthth = (4)
where h0(t) is an arbitrary unspecified baseline hazard rate which measures the effect of
time on the hazard rate for an individual whose covariates all have values of zero. X
represents the vector of covariates that influence the hazard and is the vector of their
coefficients. It is the lack of specificity of a baseline hazard function that makes the model
semi-parametric or distribution free.
Equivalently, the regression model is written as
log hi(t) = (t)+ 1Xi1+ 2Xi2+... + kX ik (5)
where(t) = logh0(t)and h0(t) is an arbitrary unspecified baseline hazard rate (LeClere,
2000).
The additional strength of the Cox proportional hazards model is that the model can
employ both time-invariant and time-varying covariates. When time-varying or time-
dependent covariates are employed, each observation i has a unique covariate vector
Xi(t).Consequently, the model in equation (4) becomes
)exp()()( )(0 tii Xthth = (6)
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The model is called the proportional hazards model because the hazard for any
observation iis a fixed proportion of the hazard of any other observation at any point in time.
This means that the ratio of the hazard function for two units with independent variables does
not vary with time t. For two observations, i and j, the ratio of two hazard function can be
expressed as follows.
)](...)22()11(1exp[)(
)(
jkX
ikX
jX
iX
jX
iX
tjh
ti
h+++= (7)
The uniqueness of the proportional hazards model is the method used for estimating the
parameter. Cox (1972) uses the method of partial likelihood to estimate the parameter in
equation (4). A general expression for the partial likelihood function is presented as
following.
=
=
=
n
i
i
n
j
jxeijY
ixeL
1
1
)(
(8)
where Yij= 1if tjtiand Yij= 0if tj
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corporate endurance, the Cox proportional hazards form of survival analysis is now applied to
the population of all companies listed on the Australian Stock Exchange (ASX) using annual
data on financial ratios, stock prices and company specific variables of age and size for the
period 1989 to 2005. The companies in financial sector are excluded from the analysis
because of different financial statements structure. Finally, there are 50 financially distressed
companies and 1,067 active listed companies in the analysis.
Time to event or survival time in this study is the number of years from the start year to
year of financial distress for distressed company or to the last year observed of active
company. In this study, the start year is the first year when data are available. Since
dependent variable in survival analysis is time to event, the time when company entering into
financially distressed is constructed in this study. Date of external administration during 1989
to 2005 is recorded.
The explanatory variables or covariates will be used in the model are financial ratios,
market based data and company-specific variables. Financial ratios have long been widely
used in explaining the possibility of corporate financial distress such as Beaver (1966),
Altman (1968), Bongini, Ferri and Hahm (2000), Routledge and Gadenne (2000), Catanach
and Perry (2001) and Rommer (2005). Beaver (1966) is the pioneering academician who used
financial ratios with univariate technique. According to Beavers study, six financial ratios
were the best predictors in financial failure prediction; (1) cash flow to total debt (2) net
income to total assets (3) total liabilities to total assets (4) working capital to total assets (5)
current ratio and (6) no credit interval. Despite Beavers criticisms, Altman (1968) developed
the well-known Z score model utilizing multivariate discriminant analysis as the technique as
well as financial ratios as explanatory variables. Five financial ratios found to be the best
The date of entering into external administration is purchased from Australian Securities and Investments
Commission (ASIC). The authors are grateful to School of Accounting and Finance and School of Mathematicsand Applied Statistics, University of Wollongong for financial support..
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predictor in corporate bankruptcy prediction model; (1) working capital to total assets (2)
retained earnings to total assets (3) earnings before interest and taxes to total assets (4) market
value equity to par value of debt and (5) sales to total assets.
This study incorporates financial ratios which measure four main categories of firms
include profitability, liquidity, leverage and activity ratios in the model.
The selection criteria is based on (1) data availability in Fin Analysis database as financial
statements of Australian firms will be used in this study is collected from the Fin Analysis
database (2) the predictive variables in previous studies (3) the potential of the variable in this
study. Finally, there will be nine financial ratios in the model as the following.
Category 1: Profitability ratios
The profitability ratios measure the firms ability to generate earnings. Profit is one source
of funds from operation. Analysis of profit is essentially concerned to stockholders in the
form of dividends. The more profit that a firm can generate, the more funds whether in term
of working capital or cash increase and enhance the liquidity of the firm. Many firms face the
financial distress when they have negative earning. Therefore profit often used as a predictor
of financial distress events. Three types of profitability ratios included EBIT margin, return on
equity and return on assets will be used in this study.
Category 2: Liquidity ratios
The liquidity ratios measure a firms ability to meet its current obligations as they become
due. Liquidity ratios also have been used to measure short term solvency. The higher level of
liquidity provided a strong barrier against financial failure. Most firms meet illiquidity and
then become financially insolvent and eventually become bankrupt while they still profitably
operate. Current ratio, quick ratio and working capital to total assets ratio will be used in this
study in order to measure the liquidity of the firms
Category 3: Leverage ratios
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The analysis of financial leverage is concerned to the capital structure of the firm. These
ratios show the sources of fund provided from external in the benefit of shareholder. Leverage
ratios also have been used to measure the long term solvency of a firm. In other words, they
measure the long term liabilities paying ability of a firm. Debt ratio will be used in this study
to measure the firms leverage.
Category 4: Activity ratios
The activity ratios measure the efficiency of a firms assets utilization. They measure the
ability of a firm using assets to generate revenue or return. If firms can use assets efficiently,
they will earn more revenue and increase liquidity and net income. Two financial ratios will
be used for measuring the efficiency of a firms assets utilization. The ratios included capital
turnover and total asset turnover.
Furthermore, we employ market based data in the analysis to investigate the relationship of
market returns and the likelihood of financial distress. Most of this manner follows Shumway
(2001). Shumway (2001) uses two market driven variables include a firms past excess
returns or market adjusted returns and idiosyncratic standard deviation of firms stock returns
in forecasting bankruptcy. The hazard model results indicate that when using market variable
only, the both of market driven data are highly significant at the 5 percent level however when
employ both market and accounting variables, idiosyncratic standard deviation of firms stock
is not significant variable in forecasting bankruptcy. These results are quite consistent with
Mossman et al.(1998). According to Mossman et al.(1998), for 12 month period, only market
adjusted returns comes up to be significant variable but not for the standard variation in
returns in bankruptcy prediction model.
In this study, to account for the criticism arise by using solely financial ratios, we
additionally include the companys past excess returns as a market based data in the model.
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The standard deviation of firms stock returns is omitted as a result of data availability
limitation for companys monthly stock returns.
Company-specific variables, age, size and squared size, are also included in the study. We
use logarithm of total assets as the proxy for size of the company and the number of years
since registration as the proxy for company age to test the association of company age and
size on corporate endurance. To allow for nonlinearities relationship between company size
and the likelihood of financial distress, we also include the square of size in the analysis. This
manner is consistent with previous literatures relating the ownership structure and firm
performance for example Himmelberg, Hubbard and Palia (1999) and Kumar (2003)
incorporate the squared company size to allow for the nonlinearities relationship of company
size in examining the relationship between ownership structure and firm value or
performance.
The detail of covariates used in the study is shown in Table 1.
Table 1: The covariates used in the study
Category No. Covariate Code Definition
Profitability 1. EBIT margin EBT EBIT/operating revenue2. Return on Equity ROE NPAT before
abnormals/(shareholders
equity-outside equity
interests)
3. Return on Assets ROA Earnings beforeinterest/(total assets-outside
equity interests)
Liquidity 4. Current ratio CUR Current assets/current
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Category No. Covariate Code Definition
liabilities
5. Quick ratio QUK (Current assets-currentinventory)/current liabilities
6. Working capital/ Totalassets
WCA Working capital/ total assets
Leverage 7. Debt ratio DET Total debts/total assetsActivity 8. Capital turnover CPT Operating revenue/operating
invested capital before
goodwill
9. Total asset turnover TAT Operating revenues/totalassets
Company-
Specific
10. Size of company SIZE Log of total assets
11. Squared size SIZE2 The square of log of totalassets
12. Age of company AGE The number of years sinceregistration
Market Based 13. Excess Returns (year t) EXR A companys stock return inyear t-1 minus ASX200
index return in year t-1
Note: All of the data are obtained from Fin Analysis Database, Aspect Huntley Company except for the
S&P/ASX200 monthly index data are obtained from Dx Database.
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Consequently, the Cox proportional hazards model which will be employed in order to
assess the relationship of explanatory variables to survival time and to evaluate the corporate
survival probability in a given time frame in this study is shown as follow.
log hi(t)=(t) + 1EBTi(t) + 2ROE i(t) + 3ROAi(t) + 4CUR i(t) + 5QUK i(t) +
6WCA i(t)+ 7DET i(t)+ 8CPTi(t) +9TATi(t) + 10SIZE i(t) + 11SIZE2i(t) +
12AGE i(t) + 13EXR i(t)
where hi(t)is the hazard of company iof entering into financially distressed at time t. This
hazard at time tdepends on the value of each covariate at time t. (t) = logh0(t) where h0(t) is
the hazard function for an individual that has a value of 0 for each of the covariates . The
covariates used in the model are time dependent variables which mean those that can change
in value over the study period. This is the one of major advantages of Cox proportional
hazards model which allows for time dependent covariates.
4.EMPIRICAL RESULTS
4.1DESCRIPTIVE STATISTICS
Table 2 presents the descriptive statistics of the data employed in the study. Sample means,
standard deviations and the number of observations are presented for all firms and for each
status.
Due to there are a number of extreme values among the observations which might produce
the heavily effect on the statistical results, the observations are truncated at the specified
thresholds. All observations with covariate values higher than the ninety-ninth percentile of
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each covariate are set to that value, in the same way, all covariate values lower than the first
percentile of each covariate are truncated1. This manner is consistent with Shumway (2001).
Table 2 reports the calculated figures both before and after truncation.
Table 2: Descriptive statistics of the data
StatusAll Firms
Active Financial DistressCovariate
(a)** (b)*** (a) (b) (a) (b)
EBT
-181.7123*
(3911.4860)
n= 12014
-32.6505
(148.4373)
n= 12014
-189.9519
(4000.3407)
n= 11485
-33.6789
(151.4233)
n= 11485
-2.8237
(69.6318)
n= 529
-10.3232
(45.5936)
n= 529
ROE-0.1240
(4.2444)
-0.1165
(0.7233)
-0.1379
(4.2778)
-0.1172
(0.7208)
0.1781
(3.4298)
-0.1020
(0.7760)
ROA -0.3127
(9.5338)
-0.1126
(0.3911)
-0.3091
(9.7370)
-0.1105
(0.3856)
-0.3909
(2.4245)
-0.1573
(0.4948)
CUR7.8090
(36.4157)
6.5873
(17.5012)
7.9075
(36.9202)
6.6559
(17.5213)
5.6716
(22.7840)
5.0978
(17.0073)
QUK7.4933
(36.4416)
6.2722
(17.5435)
7.5878
(36.9461)
6.3369
(17.5638)
5.4426
(22.8230)
4.8686
(17.0518)
WCA-0.5162
(27.9522)
0.0466
(0.2207)
-0.3063
(24.4976)
0.0474
(0.2179)
-5.0741
(68.5709)
0.0282
(0.2756)
DET1.2126
(33.1641)
0.4156
(0.4526)
0.9518
(28.5408)
0.4078
(0.4334)
6.8735
(85.2836)
0.5868
(0.7384)
1
Thep-valueof the covariates when Cox proportional hazards model is estimated are significantly improveafter truncation for example thep-valuefor DET before truncation is 0.0797but after using truncation DET is
become a highly significant covariate with thep-value
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StatusAll Firms
Active Financial DistressCovariate
(a)** (b)*** (a) (b) (a) (b)
CPT6.3886
(152.8762)
3.3241
(9.1895)
6.5482
(156.3487)
3.3425
(9.2804)
2.9237
(6.9209)
2.9237
(6.9209)
TAT1.1096
(13.2845)
0.8079
(0.9969)
1.0962
(13.5428)
0.8058
(0.9897)
1.4010
(5.0967)
0.8548
(1.1424)
SIZE7.4984
(0.9684)
7.4967
(0.9444)
7.5012
(0.9745)
7.4990
(0.9505)
7.4393
(0.8256)
7.4476
(0.8008)
SIZE257.1662
(15.0652)
57.0508
(14.6901)
57.2181
(15.1856)
57.0973
(14.7966)
56.0407
(12.1170)
56.0407
(12.1170)
AGE20.1994
(19.4437)
20.0643
(18.8623)
20.1142
(19.5590)
19.9729
(18.9533)
22.0473
(16.6568)
22.0473
(16.6568)
EXR -0.1203
(0.7471)
-0.1216
(0.7176)
-0.1142
(0.7414)
-0.1158
(0.7128)
-0.2529
(0.8523)
-0.2471
(0.8072)
Note: * The mean of the covariate, standard deviation is in bracket and a number of observations are presented. The number of
observations shown in the table larger than the number of companies used in the study because multiple observations are created
for each company due to the counting process style of input is used in the analysis.
** (a) The covariates are not truncated.
*** (b) All covariates are truncated at the ninety-ninth and first percentiles.
It is important to note that the financial ratios employed in this study bad behave as the
standard deviation before truncation are very large. This is due to there are a number of
outliers which could influence the results. Unlike many previous studies which do not account
for this problem, this study uses truncation technique to minimize the effect of the outliers.
After truncation, the behavior of the data especially financial ratios significantly improves as
their standard deviations are much smaller than before the truncation.
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According to Table 2, using the truncated data, the profitability ratios are all negative
values which show the low ability of the company to generate the profit. The means of EBT
for active and distressed company are -33.6789 and -10.3232, respectively. That means
financially distressed company in this study has lost less earnings than active company. The
means of ROE also behaves in the same way as EBT. However, for ROA, the means show
contrast results. For liquidity ratios, CUR and QUK, financially distressed company has the
means of both CUR and QUK lower than the active ones. This show that distressed company
has ability to meet its current obligations as they become due less than the active company.
The means of DET shows that distressed company has the long term liabilities paying ability
less than active company. For activity ratios, CPT and TAT, the mean values of both ratios
show mixed interpretation. According to SIZE mean values imply that the size of financially
distressed and active company in the study are quite similar. Furthermore, the age financially
distressed company in this study is more than the active company with mean values 22.0473
and 19.9729 respectively. Finally, the mean of EXR suggests the past companys excess
returns for active company is higher than the financial distressed ones.
The standard deviation of each covariate is quite big which might be caused by the extreme
values of financial ratios used in the analysis. Extreme values issue is concerned by using the
truncation technique as mentioned above. However, it is important to note that the ninety-
ninth percentile and the first percentile which have been using in the study are just the
arbitrary values.
4.2PHASSUMPTION TESTING
Proportional hazard or PH assumption assumes that the effect of each covariate is the same at
all point in time. If the effect of a covariate varies with time, the PH assumption is violated for
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that covariate. The consequences of non-proportionality include biased parameter values,
incorrect standard errors and biased estimates of the true hazard rate.
This study tests the PH assumption by testing the relationship between the Schoenfeld
residuals and failure time using Fisher's z transformation. Under the proportional hazards
assumption, the Schoenfeld residuals have the sample path of random walk, therefore, the
residuals can be used for assessing time trend or lack of proportionality (SAS_Institute,
2004). The result of PH assumption testing in this study is displayed in Table 3.
Table 3: Testing PH assumption
Covariate Fisher's z p-Value
EBT -0.0227 0.8762
ROE 0.0796 0.5854
ROA 0.1246 0.3932
CUR -0.0927 0.5250
QUK -0.0925 0.5260
WCA -0.0602 0.6799
DET 0.1197 0.4120
CPT 0.1753 0.2295
TAT -0.1499 0.3041
SIZE -0.0923 0.5270
SIZE2 -0.0662 0.6501
AGE 0.2639 0.0704
EXR -0.0469 0.7481
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According to Table 3, there is no significant relationship between the Schoenfeld residuals
and failure time for all of covariates used in the study at the 5 percent level. Therefore, the
result shows that PH assumption is satisfied for this study.
4.3COX PROPORTIONAL HAZARDS MODEL ESTIMATION
In order to assess the usefulness of financial ratios, market based data and company-specific
variables as the predictors of corporate financial distress, nine financial ratios, a market based
variable and three company-specific variables are entered into the Cox proportional hazards
model. The covariates used are time dependent variables covering 1989 to 2005. Dependent
variable is the survival time which is the number of years from the start year to year of
financial distress for distressed company or to the last year observed of active company. In
this study, the start year is the first year when data are available.
By applying the Cox proportional hazards model with financial ratios, market based
variable and company-specific variables, the Cox proportional hazards model are reported in
Table 4.
Table 4: Cox proportional hazards model estimation
Note: * Significant at the 10 percent level.
Covariate CoefficientStandard
Error2 Statistic p-Value Hazard Ratio
ROA -0.6253* 0.3438 3.3087 0.0689 0.5350
WCA 1.2620** 0.5917 4.5486 0.0329 3.5320
DET 0.9321** 0.2320 16.1485
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** Significant at the 5 percent level.
Table 4 presents the coefficient estimation, the standard error of this estimate, Wald chi-
square tests with the relativep-value for testing the null hypothesis that the coefficient of each
covariate is equal to zero and hazard ratio is presented in the last column. Hazard ratio is
obtained by computing e where is the coefficient in the proportional hazards model. A
hazard ratio equal to 1 indicates that the covariate has no effect on survival. If the hazard ratio
greater (less) than 1, indicating the more rapid (slower) hazard timing.
By considering the p-value, five covariates are highly significant at the 5 percent level.
These ratios are WCA, DET, SIZE, SIZE2 and EXR with the coefficient 1.2620, 0.9321,
4.1917, -0.2386 and -0.8094, respectively. ROA is also significant at the 10 percent level with
the estimated coefficient -0.6253.
The coefficient of WCA has positive sign which means that an increase in working capital
to total assets ratio increases the hazard of entering into financially distressed. The ratio used
for measuring the company liquidity and as mentioned in Altman (1968), a firm experiencing
consistent operating losses will have shrinking current assets in relation to total assets. This
result is contrast to what is expected as a company with high liquidity should have lower
likelihood of entering into financial difficulties.
The coefficient sign of EXR is negative indicating that an increase in covariate decreases
the hazard of entering into financially distressed. Hazard ratio for EXR is 0.4450 means that
an increase of one unit in EXR implies 0.4450 decrease in risk of financial distress. The result
indicating that the past excess returns or market adjusted returns downward as the probability
of financial distress increases. The result shows the potential usefulness of market data for the
prediction of corporate financial distress which is consistent with the results found in
Shumway (2001) and Partington et al.(2006).
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On the other hand, the sign of parameter for DET is positive that means the company with
low DET is less likely to filing financially distressed. Hazard ratio for DET is 2.5400 that
mean for unit increase in DET, the risk of becoming financially distressed changes by a
multiple of 2.5400. For ROA, the estimated coefficient is negative which imply that an
increase in firms ability to generate earnings decreases the hazard of entering into financially
distressed.
The economic interpretation of these results is straightforward. The company with too fast
growth compared to profitability will be forced to seek the fund from debt. The high
indebtedness brings more financial obligations which must be paid. Poor firms ability to
generate earnings forces the company to take more and more debt to pay these obligations and
consequently, the company will get involve in the bad circle and become ultimately failure.
For SIZE, the estimated coefficient is 4.1917. The positive sign of SIZE means that the
larger size of a company, the higher likelihood of a company entering into financial distress.
The reasonable explanation for this result is the large company might have inflexible
organizations and have the problems with monitoring managers and employees which leads to
the inefficient communication (Rommer, 2004).
The estimated coefficient for SIZE2 is -0.2386. The result suggests that the effect of
company size on financial distress is the inverted U-shaped or bell-shaped. However, this
finding is not consistent with the discussion in the study of Rommer (2004) which suggest the
U-shaped relationship between firm size and the likelihood of financial distress.
The possible explanation for this finding is because of the sample used in this study are all
publicly listed Australian companies excluding non-publicly listed companies. Therefore, the
used sample with relatively large size may capture only the effect of size for those company
samples on the likelihood of financial distress and results the inverted U-shaped relationship.
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In other words, the results do not capture the effect of company size on financial distress for
non- publicly listed companies which relatively small size.
For the sample in this study, the results suggest that the financially distressed companies
have lower profitability, higher leverage, lower past excess returns and larger size than the
active companies. However, the study results do not support the important of company age in
explaining financial distress which is consistent with the study results of Shumway (2001).
4.4CORPORATESURVIVAL PROBABILITY EVALUATION
Survival analysis contains two key functions called the hazard function and survival function.
The hazard function, shown in Equation (4), presents the risk that financial distress will occur
at time t given that the firm has survived up to time t. There is one term which is linear
predictor which is interesting term for evaluating the risk of financial distress of a company.
Linear predictor is the term Xi in hazard function. X is the vector of explanatory variables
and is the parameter which needs to be estimated. The larger value of linear predictor means
the risk of financial distress is higher.The relationship between the average linear predictor
and time for active and distressed companies is shown in Figure 1.
According to Figure 1, the values of linear predictor of distressed companies are higher
than active companies which confirm that the risk of financial distress of distressed
companies is higher than the active ones. The dramatic change of linear predictor exists after
9 years since the companies are entered into the analysis which implies the high risk of
financial distress at that time.
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Figure 1: Graph of linear predictor and time by company status
The survival function, shown in Equation (2), which defines the survival probability can be
estimated from the model to identify the probability that a company will survive longer than t
time units. The survival profiles of a typical distressed and active company are presented in
Figure 2.
Refer to Figure 2, the survival function shown in the graph are produced by averaging the
estimated survival probability of companies by company status, distressed and active
company. It can be inferred that the survival probability of the typical financially distressed
companies is lower than that of the typical active companies. Since survival function denoted
a companys probability of surviving past time t, it starts with 1.00 at the beginning and
declines as more companies entering financially distressed.
The graph shows that survival probability of distressed companies is lower than the active
companies and as the time goes by the survival probabilities for both status are decrease. The
dramatic decrease in corporate survival, especially for distressed companies, occurs after 9
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years since the companies are entered into the analysis. For distressed companies, the survival
probability that the companies will survive beyond 17 years is around 51 percent and for
active ones is around 89 percent .This result confirms the consistent result with Figure 1.
Figure 2: Graph of survival function and time by company status
5.CONCLUSION
The importance of corporate financial distress studies have been considered by many financial
economics researchers. The need for such research is obvious due to the indirect and direct
costs involved when a financially distressed company goes bankrupt. Therefore, there is the
need for a model which can provide early warning signs of possible failure.
This study provides a financial distress model which combines traditional financial ratios,
market based variable and company specific variables with a survival analysis technique in
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the form of Cox proportional hazards model. The study extends and improves the prior works
in financial distress predication literature, primarily with the application of Cox proportional
hazards model with time varying covariates in the financial distress context in investigating
various potential factors of corporate financial distress. Four main categories of financial
ratios; a) profitability, b) liquidity, c) leverage and d) activity are used as indicators of
financial distress. The companys past excess returns additionally used as a proxy for market
based data. The relationship between company-specific variables; age, size and squared size
and corporate endurance are also examined.
We incorporated 50 financially distressed companies and 1,067 active companies in
Australia during 1989 to 2005 by utilizing Cox proportional hazards model with the purposed
covariates. Our results showed that Cox proportional hazards model can provide information
regarding corporate survival probability in a given time frame and also supports the
effectiveness of financial ratios and market based variables as predictors of financial distress.
Specifically, financially distressed companies have lower profitability, higher leverage, lower
past excess returns and larger size than active companies. The study results do not support the
importance of the company age factors in explaining financial distress. The proportional
hazards assumption has been examined and the result suggests that the PH assumption is
satisfied, which suggests the appropriate use of Cox proportional hazards model.
There are a number of practical implications regarding this paper. First, management needs
to carefully consider the financial structure of the company in order to prevent possible
financial difficulties. Secondly, market based data is valuable information for detecting the
possibility of financial distress. Management and investors may use market data in addition to
financial ratios in examining corporate financial distress to obtain better decisions in relation
to predicting corporate failure, which may consequently reduce losses.
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Further implications of this study relate to further research on potential factors for
predicting corporate failure which need to be considered, for example corporate governance
variables, microeconomic variables and macroeconomic variables.
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