Impact of working capital management and capital structure on earnings in Indian chemical sector.
Mand, Harvinder Singh ; Singh, Manjit
Introduction
Capital structure refers to the mix of debt and equity used by a
firm in financing its assets. The capital structure decision is one of
the most important decisions in the area of corporate finance. One of
the many objectives of a corporate financial manager is to ensure the
lower cost of capital and thus maximize the wealth of shareholders.
Therefore, capital structure is an important management decision as it
greatly influences the owner's equity return, the owner's
risks as well as the market value of the shares. It is therefore
incumbent on management of a company to develop an appropriate capital
structure (Salawu and Agboola, 2008).
Debt has been preferred over equity because normally the cost of
debt is lower than the equity. Further, interest is paid out of before
tax profits thus interest provides tax shield and helps in reducing the
tax burden of firms consequently the profits available to equity
shareholders increase. Though leverage cannot change the total expected
earning of the company but it can maximize the earnings available to
equity shareholders. On the other hand excessive use of debt increases
the financial risk of the firm and makes the debt financing more costly.
The levering effect may also have inverse impact on profits available to
equity shareholders. The mix of debt and equity where the benefit of the
debt is higher than the cost of debt is called the optimal capital
structure. With the use of appropriate mix of securities to finance the
investment needs, the stockholders have higher rate of return on their
investment as compared to under or over levered firms.
There are different views regarding the relationship of capital
structure with earnings per share. Some researchers like, Durand (1959)
and Solomon (1963) feel that capital structure decision can influence
the earnings per share whereas others (Modigliani and Miller, 1958) feel
that capital structure has no influence on earnings per share of the
firm. Due to the conflicting opinions about the effect of capital
structure on EPS, it was considered imperative to diagnose the
relationship of capital structure with EPS. Therefore, this paper
intends to solve the above mentioned puzzle regarding the impact of
capital structure decision on EPS in the Indian Chemical Industry.
This study is an empirical investigation of financing pattern and
working capital financing and their impact on earnings in Indian
Chemical Sector. Conventional theories of capital structure based on the
assumptions of the developed markets and economies that do not hold true
in case of developing economies like India. Most of research studies
reported profitability as the most significant determinant of leverage
but the researcher perceives that it is the financial structure which
determines the profits available to equity shareholders. The financing
decisions reflect in the operational efficiencies and resultantly affect
firm's performance. This study will provide an insight into impact
of working capital management policy and capital structure on the
earnings available to equity shareholders. This study will provide
ground for the new research on Capital structure in Indian Chemical
Sector.
The paper is divided as follows: section 2 presents the theoretical
basis for the analysis and reviews some recent empirical studies in this
area. Section 3 details the methodology, explanation of the variables,
the econometric model and the data employed in the study. The empirical
results are reported in section 4 and the last section concludes and
presents the main findings of the study.
Capital Structure and Earnings: A Review of the Literature
The relationship between capital structure and earnings cannot be
ignored because the improvement in the profitability is indispensable
for the long-term survivability of the firm. Because interest payment on
debt is tax deductable whereas such deduction is not available in case
of equity financing. The addition of debt in the capital structure will
increase the earnings available to equity shareholders of the company.
Therefore, it is important to test the relationship between capital
structure and the earnings of the firm to make appropriate capital
structure decisions.
Rao (1984) have studied the financial statement of twenty companies
belonging to chemical industry of Indian corporate sector for the year
1980 to observe the impact of profitability on the debt equity ratio in
sample firms. The study has observed the negative association between
profitability and debt equity ratio for the entire sample from chemical
companies under study.
Wald (1999) used the data from approximately forty countries. The
total sample size was over 3,300 firms from the United States alone. By
applying regression analysis, the results reveal negative correlation
between leverage and profitability.
Abor (2005) took a sample of 22 firms listed on Ghana Stock
Exchange over a five-year period (1998-2002). The study found i) a
positive relationship between the ratio of short-term debt to total
assets and return on equity, ii) a negative relationship between the
ratio of long-term debt to total assets and return on equity, and iii) a
positive association between the ratio of total debt to total assets and
return on equity. In addition, the researcher found a positive
relationship between i) firm size and profitability and ii) sales growth
and profitability.
Chandrakumarmangalam and Govindasamy (2010) made an attempt to
investigate the relationship between leverage (financial leverage ,
operating leverage and combined leverage) and earnings per share by
using the data from seven public limited cement companies for a period
of 11 years from 1997 to 2007. The study found that there is significant
relationship between DFL and EPS, DCL and EPS and DOL and EPS. The study
reveals that leverage have significant impact on the profitability of
the firm and the wealth of the shareholders can be maximized when the
firm is able to employ more debt.
Gill, et al. (2011) used a sample of 272 American firm listed on
New York stock exchange for a period of three years from 2005 to 2007 to
examine the effect of capital structure on profitability of the American
service and manufacturing firms. The results of the study shows a
significant positive relationship between short term debt to total
assets and profitability and total debt to total assets and
profitability in the service and manufacturing industry whereas the
relationship between long term debt to total assets and profitability is
positive but insignificant in manufacturing industry and insignificant
in service industry.
Rafique (2011) investigated the effect of the profitability of the
firm and its financial leverage on the capital structure of the 11
listed firms in automobile sector in Pakistan. The study fails to
establish any significant relation between profitability and financial
leverage effect on the capital structure for the sample firms.
Saleem and Naseem (2011) analyzed the leverage and profitability of
selected oil and gas companies of Pakistan during 2004 to 2009 to
understand the impact of leverage on profitability and EPS. The study
failed to support the hypothesized positive relationship between
financial leverage and both of the profit measures. The results also
indicated that high levered firms were less risky in both market based
and accounting based measured.
Shubita and Alsawalhah (2012) seeks to extend the Abor's
(2005) finding regarding the effect of capital structure on
profitability by examining the effect of capital structure on
profitability of the industrial companies of Jordan. The study sample
consists of 39 companies over a period of six years from 2004 to 2009.
The result of study reveals significant negative relation between debt
and profitability. The findings of the study suggested that profitable
firm depend heavily on equity as their main source of financing.
Most of the research studies have been conducted for measuring the
impact of capital structure on profitability whereas a few studies are
available for measuring the effect of capital structure on the earnings
available to equity shareholders. Further, no study has been found so
far to measure the impact of working capital policy along with capital
structure on earnings available to equity shareholders. In summary,
based on limited availability of literature on the relationship between
capital structure and the profitability of the firm, it has been found
that capital structure impacts the profitability of the firm. The
present study will provide an insight into impact of working capital
management policy and capital structure on the earnings available to
equity shareholders.
Research Methodology
Objectives and Scope of the Study
The objective of the study is to measure the impact of working
capital management policy and capital structure on earnings available to
equity shareholders. The proposed study has been based on secondary data
only. The necessary data has been procured from the 'Prowess'
maintained by Centre for Monitoring Indian Economy (CMIE). The present
study covered a period of ten years from 2001-02 to 2010-11. From the
list of 500 top companies from Bombay Stock Exchange, firms relating to
Chemical Industry have been selected. The firms have selected on the
basis of following criteria consist of three tests including: i) firm
must belong to the Chemical sector, ii) firm must remain functional
during study period, i.e., 2001-02 to 2010-11 and iii) firm must have
comprehensive data for computation of required variables. After proper
screening and filtering, the firms with incomplete data have been
dropped from the analysis.
The initial sample for the study consisted of 27 firms from the
Indian Chemical Industry. After critically examining the consistency and
availability of data for each firm, the sample for the study was limited
to 25 firms. However based on the third criteria further two companies
were dropped. Thus, the final sample for the study included 23 firms
which resulted to 368 total observations.
Research Design
For pursuing any research there is need for proper research design.
This has been divided into following sections:
(I) Conceptual Framework and Measurement of variables
(II) Panel Data Model
Conceptual Framework and Measurement of variables
The study is conducted over a period of ten years from 2001-02 to
2010-11 to measure the impact of working capital management policy and
capital structure on earnings available to equity shareholders in the
Chemical Industry. This section presents the measurements used for
dependent and independent variables which influence the earnings of a
firm.
Dependent Variable
The dependent variable for this study is earnings available to
equity shareholders (EPS). EPS has been calculated by dividing the total
earnings available to equity shareholders divided by total number of
equity shareholders. Total earnings means profits after payment of
preference dividend to preference shareholders, interest payments to
bondholders and debenture-holders and other outside payments. The
measurement of the variables is a matter of contention between financial
economists and practitioners. Differences exist both in definition and
method of computation of these variables. However, to be the part of
that debate is beyond the scope of the study. Following the existing
literature, the study adopted simple but effective measures of the said
variables.
Independent Variables
The literature has identified a number of firm characteristics
which may affect the earnings available for equity shareholders. In this
study, capital structure and working capital management has been taken
as independent variables along with fourteen other control variables,
the measure used for those factors has been discussed in the following
section:
Capital Structure
Simply, capital structure refers to the mix of securities issued
for financing the assets used by a firm. But different empirical studies
have defined capital structure in different ways. The definition of
capital structure depends on the objective of the analysis (Rajan and
Zingales, 1995). In this study, two different measures of capital
structure have been used. Following the literature survey, total debt to
total assets and debt equity ratio has been used as the proxy for
measuring capital structure in the present study. Debt equity being the
true measure of leverage in the sense that fixed interest commitment
acts as a lever to enlarge return to shareholders. Total debt includes
debt from banks (short term as well as long term) and financial
institutions, inter-corporate loans, fixed deposits from public and
directors, foreign loans, loan from government, etc. Funds rose from the
capital market through the issue of debt instruments such as debentures
(both convertible and non-convertible) and commercial paper are also
included here. And the equity includes equity share capital, preference
share capital and reserve and surpluses minus revaluation reserves and
miscellaneous expenses not written off. This study has used book value
of debt and equity. Total assets include both fixed assets and current
assets but excluding fictitious assets. The leverage has been defined
for the purpose of this study as follows:
Capital Structure = Debt/Equity
Capital Structure = Total Debt/Total Assets
Working Capital Management
To remain consistent with previous studies, Working capital
management has been measured by ratio of current assets and current
liabilities. For managing liquidity efficiently, a company's
management has to decide on the optimum level of current assets and
current liabilities that it should carry.
Other control variables include size, growth, profitability,
tangibility, age, earnings variability, debt service capacity, dividend
payout ratio, non-debt tax shields, degree of operating leverage,
price-earnings ratio, promoter shareholdings, tax rate and uniqueness.
The measures used for these control variables have been derived from
literature survey.
In line with Rafiq et al. (2008) this study has used percentage
change in total assets to measure growth.
This study has measured size (SZ) of the firm by the taking the
natural log of total assets as this measure smoothens the variation over
the periods considered.
Earnings before Interest and Taxes (EBIT) divided by total assets
have been used as a measure of profitability in this study.
The proxy used in this study to measure the value of tangible
assets of the firm is the ratio of net fixed assets to total assets.
In this study age has been measured by number of years since
incorporation as used by all the studies
This study uses the value of the deviation from mean of net profit
divided by total number of years for each firm in a given year as a
proxy for measuring earning volatility.
Following Bhatt (1980) and Kumar et al. (2012), this study has used
earnings before interest and taxes to fixed interest charges as proxy
for measuring the debt service capacity.
In line with the Rasoolpur (2012), this study has used dividend per
share to earnings per share to measure the dividend payout ratio.
Following Oztekin (2010), this study has used the depreciation
scaled down by total assets to measure nondebt tax shield.
In the present study, the percentage change in EBIT to percentage
change in sales is being used for measuring operating leverage.
In line with Rani (1997), MPS/EPS has been used as a proxy for
price-earning multiplier.
In line with Saravanam, (2006), this study has been measured as a
percentage of shares held by the promoters to the total number of shares
outstanding.
This study has used the following method to calculate the effective
tax rate as used by Singh, G. (2011):
TR = 1 - (EAT/ EBT)
Where,
TR = Tax Rate
EAT = Earnings after Tax
EBT = Earnings before Tax
As in line with Rasoolpur (2012), this study has used selling and
distribution expanses over sales as a proxy for uniqueness.
Note that all variables were calculated using book value.
Panel Data Model
The model used in this study has been adopted from Cuong and Canh
(2012). This study has used panel data for the period 2001-02 to 2010-11
and an appropriate regression model to examine the impact of capital
structure and working capital management on earnings available to equity
shareholders in the Indian Chemical Industry. Panel data have space as
well as time dimension (Gujrati, 2004). If well-organized panel data are
given, then, panel data models are definitely attractive and appealing
since they provide ways of dealing with heterogeneity and examine fixed
and/or random effects in the longitudinal data. Panel data give more
informative data, more variability, less collinearity among the
variables, more degrees of freedom and more efficiency (Baltagi, 2005).
From a random sample, the researcher has applied panel data
techniques of Fixed Effects model and Random Effects model.
Hausman's specification test has been applied to check the
suitability of model and if the results of this test rejects the null
hypothesis, which is, "difference in coefficients not
systematic", then Fixed Effects model should be used otherwise
Random Effects model would be appropriate. Further, this study test the
validity of Random Effects model by applying Wald chi square and should
use Random Effects model only by rejecting null hypothesis of "no
random effects", otherwise Pooled Ordinary Least Square (OLS)
regression can be used for analysis.
Variance Inflation Factor (VIF) has been used to check the
multicolloinearity among regressors. In the present study, analysis has
been performed with the help of software packages STATA.
For the purpose of analyzing the effect of selected exogenous
variables on the EPS, the following regression equations have been
developed:
EPS = [b.sub.0] + [b.sub.1]TD/TA + [b.sub.2]WC + [b.sub.3]SZ +
[b.sub.4]GR + [b.sub.5]PROF + [b.sub.6]TANG + [b.sub.7]AG + [b.sub.8]EV
+ [b.sub.9]DSC + [b.sub.10]DPR + [b.sub.11]NDTS + [b.sub.12]DOL +
[b.sub.13]P/E + [b.sub.14]PH + [b.sub.15]TR+ [b.sub.16]UNIQ
EPS = [b.sub.0] + [b.sub.1]D/E + [b.sub.2]WC + [b.sub.3]SZ +
[b.sub.4]GR + [b.sub.5]PROF + [b.sub.6]TANG + [b.sub.7]AG + [b.sub.8]EV
+ [b.sub.9]DSC + [b.sub.10]DPR + [b.sub.11]NDTS + [b.sub.12]DOL +
[b.sub.13] P/E + [b.sub.14]PH + [b.sub.15]TR+ [b.sub.16]UNIQ
Where,
EPS = Earnings per Share
TD/TA = Total Debt to Total Assets
D/E = Debt-Equity Ratio
WC = Working Capital
where [b.sub.0] = constant of the regression equation
[b.sub.1], [b.sub.2], [b.sub.3], ... and [b.sub.16] = Coefficient
of Capital Structure, Working Capital, Size, Growth, Profitability,
Tangibility, Age, Earnings Variability, Debt Service Capacity, Dividend
Payout Ratio, Non-debt Tax Shield, Degree of Operating Leverage,
Price-earnings Ratio, Promoter Shareholdings, Tax Rate and Uniqueness
respectively.
Empirical Findings
The study have used two different models of capital structure
(Total Debt to Total Assets and Debt-equity Ratio) to measure the impact
of capital structure on EPS. Therefore, empirical findings are presented
for two different models separately.
Model I
Variance Inflation Factor (VIF) Test
VIF test has been applied to check the multicollinearity among the
regressors used in present study. Variance Inflation Factor (VIF) has
been used which refers to actual disparity percentage to total
disparity. Gaud, et al. (2003) has quoted that the collinearity should
not constitute a problem, if VIF values are lower than 10. It has been
observed from the VIF test analysis that three variables, i.e., growth
and size measured by sales have high collinearity with growth and size
measured by assets and cash flow coverage ratio have high collinearity
with debt service capacity, so to get the reliable results the study
have dropped these three variables from further analysis. The results of
VIF test has been displayed in table--1.1. After removing these
variables, VIF has come down below the level of 10 for all the remaining
regressors. VIF test reveals that the values for independent variables
are below 2.77, hence, collinearity can not be a problem for the present
model.
Hausman's Specification Test
The Hausman's Specification test has been used to check the
appropriateness of model for Chemical Industry. The value for
Hausman's test is 8.57 and p-value (0.7394) being higher than .05
supports the acceptance of null hypothesis regarding the difference in
coefficients. The result of Hausman's test reveals the suitability
of Random-effects model for this data. Therefore, the results of
Random-effects regression for Chemical Industry have been displayed for
interpretation.
Panel Data Analysis
Table 1.2 presents the panel regression results to examine the
impact of capital structure (measured as total debt to total assets) and
working capital management on EPS for Chemical Industry. Random-effects
model has been used for interpreting the results for this model in
Chemical Industry on the basis of outcome from Hausman's
Specification test.
The value of Wald chi square is 201.89 and p-value being less than
.05 validates the model. The Durbin-Watson value is 1.16 which is within
the range of 1-3 means there is no problem of auto correlation in this
model. The relationship of leverage with EPS has been found negative but
the relation has not been statistically significant. The relation of
working capital management has been found positive with EPS and relation
is statistically significant at .10 level. That relation indicates that
one unit of increase in working capital increase the EPS with 0.997
units. Size and profitability have positive significant relationship
with EPS whereas all other control variables have statistically
insignificant relationship. It means that only size and profitability
have been influencing EPS whereas the remaining variables have not been
affecting EPS in Chemical Industry.
Model II
Variance Inflation Factor (VIF) Test
VIF test has been applied to check the multicollinearity among the
regressors used in present model. Gaud, et al. (2003) has quoted that
the collinearity should not constitute a problem, if VIF values are
lower than 10. It has been observed from the VIF test analysis that
three variables, i.e., growth and size measured by sales have high
collinearity with growth and size measured by assets and cash flow
coverage ratio have high collinearity with debt service capacity, so to
get the reliable results the study have dropped these three variables
from further analysis. The results of VIF test has been displayed in
table 1.3. After removing these variables, VIF has come down below the
level of 10 for all the remaining regressors. VIF test reveals that the
values for independent variables are below 2.61, hence, collinearity can
not be a problem for the present model.
Hausman's Specification Test
Hausman's Specification test has been applied to check the
appropriateness of model. The value of Hausman's Specification test
is 8.45 with p-value of 0.7488. Being p-value for Hausman's test is
greater than .05 that does not reject the null hypothesis. Hence,
Random-effects model has been considered appropriate for this model and
hence, used for interpreting the results for Model II of Indian Chemical
Industry.
Panel Data Analysis
Table 1.4 presents the panel regression results to examine the
impact of capital structure (measured as debt-equity ratio) and working
capital management on EPS for Chemical Industry. Random-effects model
has been used for interpreting the results for this model in Chemical
Industry on the basis of outcome from Hausman's Specification test.
The value of Wald chi square is 202.89, with a p-value of 0.0000
suggest that model is statistically significant and can be used for
interpretation. The value of Durbin-Watson test comes to be 1.164, which
is within the range of 1-3, revealing that data are not suffering from
the problem of auto correlation. The R2 for the model is 0.3979, which
means that 39.79 per cent of variation in EPS has been explained by this
model. The beta coefficient for leverage is -1.0437 which shows that
leverage has been found to be negatively related to EPS and p-value of
0.397 reveals that relation has not been statistically significant. The
beta coefficient for working capital management is 1.001 which shows
that working capital management has been found to be positively related
to EPS with z-value of 1.89 and with p-value being less than 0.10
reveals that relation has been statistically significant at .10 level.
It shows that with one unit of change in working capital management, EPS
will increase by 1.001 units. From the control variables, size and
profitability has been found to be positively related to EPS and
relation has been found statistically significant at .01 level. All
other control variables included in the model has been turned out to be
statistically insignificant means those variables are not important for
influencing EPS of Chemical Industry during the study period.
Conclusion
This paper investigates the impact of working capital management
policy and capital structure on EPS of firms in the Indian chemical
sector. It is found from the empirical analysis that capital structure
is not influencing the EPS of firms in Indian Chemical Industry and
further there is no difference in results by employing different
measures of capital structure. But the working capital management policy
has been influencing the EPS positively for Chemical firms with both the
models during the study period, although the beta coefficient is little
different in both the models. From the control variables, only size and
profitability has turned out to be significant variables affecting EPS
of chemical firms during study period.
The empirical analysis shows that the relation of both measures of
capital structure with EPS have been found negative and statistically
insignificant whereas working capital management have positive and
statistically significant relation with EPS in Indian Chemical industry.
The firms in chemical sector are using working capital management
judiciously to increase the earnings available to equity shareholders
but the high gearing ratio starts eroding the EPS of firms and tax
benefits start to disappear. This may be one of the reasons for the
negative relationship between capital structure and EPS (see Table 1.2
and 1.4). Although interest on debt is tax deductable, a higher level of
debt increases default risk, which in turn, increases the chance of
bankruptcy for the firm. Therefore, the firm must consider using an
optimal debt/equity ratio which will minimize the cost of capital.
Therefore, it is important for financial managers to understand and
review capital structure policy on a yearly basis to increase the
earnings available to equity shareholders in Chemical firms.
Limitations
This is a co-relational study that investigated the impact of
capital structure and working capital management on the EPS. There is
not necessarily a causal relationship between the three although some
conjectures were provided to the findings. This study is limited to the
sample of Indian Chemical industry. The findings of this study could
only be generalised to firms similar to those that were included in this
research. Only large scale firms have been chosen from BSE-500 for this
study. In addition, sample size is small.
Future Research
Future research should investigate generalisations of the findings
beyond the Indian Chemical sector. Important control variables such as
corporate governance and role of CEO should also be used. The future
study may seek to test macroeconomic variables such as business cycle.
Medium and small-sized firms should have been included and comparison
should have been made between large, medium and small sized firms.
Harvinder Singh Mand
Assistant Professor, Department of Commerce, Punjabi University
College, Bathinda.
Manjit Singh
Professor, Department of Applied Management, Punjabi University,
Patiala.
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Table--1.1
VIF test for Model I in Chemical Industry
Variable VIF 1/VIF
NDTS 2.77 0.361524
TANG 2.53 0.395304
P/E 2.05 0.487971
TD/TA 1.94 0.515567
S(A) 1.81 0.552953
DPR 1.80 0.555981
PFTY 1.72 0.580292
AGE 1.66 0.600680
PH 1.66 0.603457
EV 1.62 0.616911
DSC 1.51 0.662492
UNIQ 1.35 0.741398
TR 1.31 0.760999
G(A) 1.22 0.822266
WC 1.21 0.827985
DOL 1.07 0.938398
Mean VIF 1.70
Table 1.2
Random-effects Regression Results for Effect of Working
Capital Management and Capital Structure (Total Debt to
Total Assets) on EPS in Chemical Industry
R-sq: within = 0.5020 Number of groups = 23
between = 0.2816 Wald chi2 (16) = 201.89
overall = 0.3983 Prob > chi2 = 0.0000
Number of observations = 230
Variable Regression Coefficients
Capital structure (TD/TA) -3.355 (0.49)
Working capital management 0.997 (1.87) ***
Size (Assets) 7.844 (2.93) *
Growth (Assets) -1.089 (0.69)
Profitability 158.971 (8.28) *
Tangibility 5.528 (0.66)
Age 0.013 (0.12)
Earnings variability 0.016 (1.57)
Debt service capacity 0.011 (0.63)
Dividend payout ratio 0.277 (0.30)
Non-debt tax shield -130.640 (1.27)
Degree of operating leverage -0.001 (0.08)
Price-earnings ratio -0.012 (0.94)
Promoter holdings 9.792 (1.34)
Tax rate -6.701 (0.84)
Uniqueness -49.826 (1.54)
Cons -32.348 (2.49)
Durbin-Watson test= 1.161
*** indicates significance at 10 per cent level
* indicates significance at 1 per cent level
Note: The figures given in parentheses indicate the z-values.
Table 1.3
VIF test for Model II in Chemical Industry
Variable VIF 1/VIF
NDTS 2.61 0.382695
TANG 2.29 0.436339
P/E 2.00 0.498870
S(A) 1.80 0.555619
DPR 1.79 0.558201
PFTY 1.73 0.578681
AGE 1.68 0.595554
PH 1.62 0.618466
EV 1.59 0.627102
LU O' 1.57 0.636948
DSC 1.41 0.710495
UNIQ 1.33 0.752137
TR 1.31 0.760561
G(A) 1.23 0.812434
WC 1.20 0.835905
DOL 1.06 0.944444
Mean VIF 1.64
Table 1.4
Random-effects Regression Results for Effect of Working
Capital Management and Capital Structure (Debt-equity Ratio)
on EPS in Chemical Industry
R-Sq: within = 0.5036 Number of groups = 23
between = 0.2811 Wald Chi2 (16) = 202.89
overall = 0.3979 Prob > Chi2 = 0.0000
Number of observations = 230
Variable Regression Coefficients
Capital structure (D/E Ratio) -1.043 (0.85)
Working capital management 1.001 (1.89) ***
Size (Assets) 7.624 (2.83) *
Growth (Assets) -0.982 (0.62)
Profitability 157.443 (8.21) *
Tangibility 6.342 (0.76)
Age 0.014 (0.13)
Earnings variability 0.016 (1.59)
Debt service capacity 0.011 (0.63)
Dividend payout ratio 0.260 (0.28)
Non-debt tax shield -138.018 (1.34)
Degree of operating leverage -0.001 (0.08)
Price-earnings ratio -0.012 (0.93)
Promoter holdings 10.373 (1.41)
Tax Rate -6.188 (0.77)
Uniqueness -49.214 (1.53)
Cons -31.995 (2.48)
Durbin-Watson Test= 1.472
*** indicates significance at 10 per cent level
* indicates significance at 1 per cent level
Note: The figures given in parentheses indicate the z-values.