My latest research article
Financial Internet Quarterly „e-Finanse” 2016, vol.12/ nr 4, s. 111-119
DOI: 10.1515/fi qf-
ANALYSIS OF SOME INNER FACTORS AFFECTING THE
LENDING RATE AND COMMERCIAL BANK BEHAVIOR
(An Empirical Study Based on
the Commercial Banking Sector of Pakistan)
Zulfiqar Ali1, Zahid Bashir2, Muhammad Usman Arshad3, Ahmed Ghazali4,
Muhammad Asif5, Fahad Najeeb Khan6
Abstract
This research study aims to investigate the potential inner factors of the lending rate in the commercial banking sector of Pakistan. For this purpose, seven bank-specific explanatory variables (capital adequacy, management efficiency, liquidity, asset quality, investment to asset, loan to asset
and deposit to asset ratios) were selected to determine their impact on lending behavior. Panel
data techniques were emplyed on secondary data collected from the annual financial reports from
a sample of ninteen major commercial banks over a period of 2007 to 2014. For the purpose of
analysis, descriptive statistics, Pearson correlation and panel data techniques for regression analysis such as the fixed effect regression models were considered after conforming to the Hausman
specification (1978) test. The findings of this study revealed that only four out of seven explanatory
variables (ratio of investment to total assets, deposit to asset, loan to asset and liquidity ratio) have
a significant relationship with lending rate. Two of the significant determinants (liquidity ratio and
investment to asset ratio) are positively correlated while the remaining two significant explanatory
variables (loan to asset ratio and deposit to asset ratio) are found negatively correlated with lending rate. The findings of the study are applicable to the banking sector of Pakistan. The current
study ignored the use of macro factors like GDP and inflation, etc. which could be used in future
research.
JEL classification: C01, C23, C58, C87, D22, G10, G21, G39
Keywords: Inner factors, Lending behavior, Commercial banking sector, Pakistan
Received:-
Accepted:-
Finance Scholar in University of Gujrat, Pakistan and Lecturer in UCP (Punjab College), email:-
Lecturer Department of Commerce, University of Gujrat, Pakistan. email:-
Lecturer Department of Commerce, University of Gujrat Pakistan, email:-
Lecturer Department of Commerce, University of Gujrat Pakistan, email:-
Lecturer Department of Commerce, University of Gujrat Pakistan, email:-
Lecturer Department of Business Administration, University of Sargodha, bakhar campus Pakistan, email:-
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Zulfiqar Ali, Zahid Bashir, Muhammad Usman Arshad, Ahmed Ghazali, Muhammad Asif,
Fahad Najeeb Khan
Analysis of some inner factors affecting the lending rate and commercial bank behavior
dependent variable explained by independent variables.
Introduction
The variation in lending rate is a matter of great
concern to all the major stakeholders in the economy. In
recent times the high lending rate charged by commercial
banks has raised many questions for the policy makers.
The lending rate indicates the cost of borrowing funds
from banks for business; this makes it critical for the
expansion of economic activity in a country. While it is
evident that the lending rate is crucial for the progress and
development of all types of entrepreneurial activities, the
most important thing is to distinguish the determinants of
the lending rate in an established and integrated banking
sector regulated by a central bank.
The major role of a banking system is to activate and
channel assets to the real zones of the economy. A rigorous
financial system rewards the shareholders for their share
and encourages further investment. On the other hand,
poor financial performance results in banks’ downfall
and failure which has a negative impact on the financial
growth of the economy. Due to the vital role of banks in
capital formation, banks should be more closely examined
in the economy (Aspal & Nazneen, 2014). Lending rates
of commercial banks determine the profitability. Higher
lending rates have remained a problematic issue and been
difficult to reduce. Economist and academics argue that
high interest rates are a barrier to economic development.
(Ngumi, 2014) Changes in lending rates disturb financial
performance of CBs. In one survey, the majority of the
respondents specified that lending rate variations affect
productivity; competition from other monetary entities to
a very great extent affects possible stock opportunities and
overall development of the bank (Kananu & Ireri, 2015). In
any banking sector the commercial banks use lending rates
in pricing their goods and make a distinction from those
offered by other banks. Commercial banks set the lending
rates during the procedure of lending and deposit rates
which are determined by individual bank specific factors
(Siddiqui, 2012). Research on the determinants of lending
rate was initially directed in developed countries. One of
the classical researches was carried out by (Arifi, Durguti,
Tmava & Kryeziu, 2014) in Kosovo where they investigated
the effects of Basel III on the interest rate. Different ratios
(capital adequacy, asset quality, investment to asset, and
loan to asset, deposits to asset, management efficiency
and liquidity) were tested to see how they affect the
lending rate. This study had 76.5% of the variation of the
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„e-Finanse” 2016, vol. 12 / nr 4
However, there have not been many researches
directed towards developing countries that saw the
applicability of the determinants of lending rate from the
developed nations. (Ngigi, 2014) (Georgievska, Kabashi,
Manova-Trajkovska, Mitreska & Vaskov, 2011), (Siddiqui,
2012) (ROTICH & Gladys, 2014) (Mbao, Kapembwa,
Mooka, Rasmussen & Sichalwe, 2014) (Ongore & Kusa,
2013) (Kimeria, 2014) were among those scholars who
studied the determinants of lending rate issues in the
developing nations. There are some problems in how
commercial banks in Pakistan choose their lending rates
and the determinants which influence the lending rates.
Many researchers use different variables to determine
the lending rate in banking sectors. If Pakistan wants to
become a part of the global market like other developed
countries such as Japan, China, Singapore, the United
States, etc., then it is compulsory to take those steps which
are creative and also enhance the financial performance
of the banking sector.
Objective of the Study
The aim of this study is to investigate the impact of
bank specific inner factors on average lending behavior
of in the commercial banking sectors of Pakistan
which ultimately enhance the corporate performance
toward economic growth directly and indirectly. The
researcher’s main objective is to investigate different
determinants which have significant impact on bank
financial performance during the period of 2007 to 2014
in Pakistan. The determinants include the bank specific as
well as the macro factors. The study not only finds the
significance of the relationship between lending rates and
factors but also the direction, comparison and strength
by using different statistical and econometric tools and
techniques like panel data modelling, correlation analysis
and descriptive statistics.
Research Questions
To explore this study, the researchers tried to
investigate the following research questions on the basis
of previous research studies specified in the literature
review section.
1) On average, how do the inner factors contribute to
commercial banking in Pakistan, including lending rate for
the period of study?
2) What kind of association do the inner factors of a
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Zulfiqar Ali, Zahid Bashir, Muhammad Usman Arshad, Ahmed Ghazali, Muhammad Asif,
Fahad Najeeb Khan
Analysis of some inner factors affecting the lending rate and commercial bank behavior
commercial bank have along with lending behavior for the
period of study?
3) How can the potential inner factors of commercial
banks in Pakistan affect their lending behavior for the
period of study?
4) Are the observed findings verifiable with the
previous research studies?
Innovation of the Study
The researcher after analyzing previous studies
comes to the conclusion that previous studies especially
with reference to the lending behavior of commercial
banks of Pakistan for the period of study-
lacks studies with the potential inner factor. The lending
function of commercial banks is an important one, so
the policy makers in commercial banks should be able to
explore these factors while making lending decisions.
Review of Literature
Various studies have been conducted relating to this
study of significant impact on lending rate. But there is
very little literature available in the Pakistan commercial
banking system about this context. However, other
developed countries have conducted a lot of research
related to this context.
(Arifi et al., 2014) This study examines the effect of
determinants on the lending rate of loans in the Kosovo
banking system. In this paper time series data of all the
listed banks during the year 2006 to 2013 was analyzed
using multiple regression models to determine the impact
of capital adequacy, management efficiency ratio, liquidity
ratio, asset quality ratio, investment, loans and deposits
ratios on average interest rate of loans. The regression
model of the Kosovo Banking System showed that all ratios
mentioned in this study have a significant impact on rate
of interest. This study had 76.5% of the variation of the
dependent variable explained by independent variables.
(Nucu, 2011) The determinants had a more significant
role than preceding Basel to survive in economic crises
increasing the profitability of the banking sector.
(Ali, Akhtar & Ahmed, 2011) studied the bank specific
determinants of the financing sector of commercial
banks in Pakistan. This study argues that sector specific
factors have a great effect on the world’s financial system
and economies. The study shows that a significant
relationship exists between financial behavior and the
„e-Finanse” 2016, vol. 12 / nr 4
Basel requirements.
(Hannoun, 2010) This study examined the effect of
determinants; after implementation of the determinants
the financial position of banks became four times higher
than previous cases.
(Mbao et al., 2014) observed the impact of a number
of variables on lending rate. This study was done in Zambia
using a panel regression technique. The goal of this study
was to establish the role that a bank’s balance sheet data
play in influencing the lending rate. Bank-specific micro
and economy-wide macro data was used from 2005 to
2013. This study indicated that lending rate was to an
important extent influenced by variables involving bank
costs. This analysis suggested that bank expenses are
important for lending rate and other factors also have
great impact.
(Ngata & Njeru, 2015) studied the impression of
Basel Liquidity accords in the banking system of Kenya
on lending rates. In this study data was collected from
CBK and World Bank. All commercial banks in Kenya were
designated as the target population. The relationship of
the dependent variable and independent variables; core
capital requirement, liquidity ratio, reserve requirement
and loan to deposit ratio requirement was measured by
regression and correlation techniques. The conclusion
of the study showed that there was an insignificant
relationship between the core capital requirement and
reserve ratio requirement on interbank lending rates
but significant relationship between the liquidity ratio
requirement and interbank lending rates. Finally, the
findings demonstrate a significant relationship between
the loans to deposits.
(Richard & OKOYE, 2014) in Deposit Money Banks
studied the effect of bank lending rate on performance
in Nigeria. To determine how performance of banks was
affected by lending rate policy, the regression technique
was used. The data was collected between 2000 and
2010. The outcomes of the study established that the
monetary policy and lending rate had sound effects on
the performance of banks. (Hussain et al., 2012) To solve
the liquidity issue determinants used the ratio of Liquidity
coverage (LCR). The main objective of this ratio is that
commercial banks must have more liquid assets that are
easily converted into cash to fulfill the cash requirement
within 30 days. After reviewing the literature, earlier
studies mainly focused on the relationship among rate
of interest and non-performing debts in banking sectors.
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Zulfiqar Ali, Zahid Bashir, Muhammad Usman Arshad, Ahmed Ghazali, Muhammad Asif,
Fahad Najeeb Khan
Analysis of some inner factors affecting the lending rate and commercial bank behavior
The whole system of commercial banks was to a great
degree facilitated without increasing the lending rate.
A main reason in fluctuation of lending rate generally
depends upon the financial strength of the banking
sector and variation in market rates of their assets and
liabilities, although a very few developing countries
show an incredible contribution on determinants of the
lending rate. So, there is need to evaluate the impact of
determinants on lending behavior of commercial banks of
Pakistan.
Source of Data and Methodology
Nature and Source of Data
The data was collected from “Financial statement
of the commercial banks in Pakistan”, available online
at their respective website for bank specific factors.
Panel data tehniques were employed on secondary data
collected from the annual financial reports from a sample
of ninteen major commercial banks over a period of 2007
to 2014. It is a short panel data due to its nature. Cameron
and Trivedi (2009) stated that a panel is considered to be
a short panel when it has a large or many entities but few
time periods. In the current research, there are 19 banks
and an 8 year time period, so it is a short panel. This study
is applicable to the commercial banking sector of Pakistan.
On the other hand, this study is not applicable to the nonfinancial sectors and financial sectors of Pakistan other
than commercial banks due to a change of their financial
structure, nature of the business and lending factor.
Modelling
The current study aims to investigate the impact of
some bank specific factors on lending rate which can be
shown as a relationship in the form of correlation analysis,
regression analysis and the Hausman specification test.
Economic Model
The researchers expected to form the following
economic relation between lending rate and factors
that determine it. The following economic model can be
formed:
LNDR = ƒ(Banking specific factors)
The bank specific factors includes Capital adequacy
ratio, management efficient ratio, liquidity ratio, asset
quality ratio, investment to asset ratio, loan to asset ratio
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„e-Finanse” 2016, vol. 12 / nr 4
and deposit to asset ratio.
General Econometric Models for Panel data
The current study utilized the dataset in the shape
of a panel. It refers to the pooling of observations over
a series of a number of time periods and cross sections
(Baltagi, 2005). The structure of the general econometric
model for panel data is as follows:
(1)
where “i” denoting cross sections and “t” denoting
the time period dimension of panel data, “y” denotes the
dependent variable in the above equation 3.1 while “X”
is the ith observation on k explantory variables (Baltagi,
2005). “β” denotes K × 1 and “α” denotes the scaler in
the above equation while “μit” denotes the unobservable
factors affect in the panel data modelling stated above. It
is further composed of the following two elements:
(2)
where the term“μi” captures the specific-individual
effect not included in the regression model while the term
“νit” denotes the remaining unobservable factors which is
the usual error term in the regression model.
Fixed Effect Model
(Baltagi, 2005) stated that when our inference is
limited to the individual behavior of a group of firms, the
fixed affect model is an appropriate choice for prediction
of the relationship between dependent and independent
variables in a panel data model. In this case the term
“μi” is a parameter which is assumed to be fixed and
is estimated for the purpose of inference in panel data.
The remaining unobservable factors are stochastic with
“νit” which are distributed identically as IID (0, σν2) and
changes with individual and time invariants. It is further
assumed under the fixed affect model that for all “i” and
“t”, the “Xit” does not depend on “νit” for the purpose of
inference. So, the econometric model for fixed effect in
panel data will take the form as follows:
(3)
The model for current study can be converted into
fixed effect for bank specific factors as follows:
(Lending Rate)it = (βo+ μi) + β1(Capital Adequacy
Ratio)it + β2(Management Efficiency Ratio)it +
β3(Liquidity Ratio)it + β4(Asset Quality Ratio)it
+β5(Investment to Asset Ratio)it + β6(Loan to Asset
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(4)
Zulfiqar Ali, Zahid Bashir, Muhammad Usman Arshad, Ahmed Ghazali, Muhammad Asif,
Fahad Najeeb Khan
Analysis of some inner factors affecting the lending rate and commercial bank behavior
Ratio)it + β7(Deposit to Asset Ratio)it + νit
Random Effect Model
(Baltagi, 2005) further stated that the random effect
model is appropriate in a situation where the researcher
intends to draw individuals randomly from a large
population. In this case the term “μi” is assumed to be
random. So, μi ~ IID (0, , σμ2), νit ~ IID (0, , σν2) and that
the values of μi are independent of the values of νit. In
addition, the values of Xit are also independent from μi
and νit.
The random effect model is as follows:
(5)
where μit represents between-entity error and νit
represents within-entity errors.
The fourth model of current study using the random
effect approach for bank specific factors can be stated as:
(Lending Rate)it = βo + β1(Capital Adequacy Ratio)it
+ β2(Management Efficiency Ratio)it + β3 (Liquidity
Ratio)it + β4(Asset Quality Ratio)it +β5 (Investment
to Asset Ratio)it + β6(Loan to Asset Ratio)it +
β7(Deposit to Asset Ratio)it + (μit + νit)
(6)
Pooled OLS Model
The Pooled OLS model is used when it is assumed
or applicable that an individual effect of a cross-section
or time period does not exist “μi = 0”, so the OLS pooled
model is considered an efficient way to gain consistent
parameter estimates (Baltagi, 2005). The Pooled OLS
model can be stated as follows:
(7)
„e-Finanse” 2016, vol. 12 / nr 4
The 7th model is established to analyze the effect
of bank specific factors on lending rate of loans using the
Pooled OLS approach as follows:
(Lending Rate)it = βo + β1(Capital Adequacy
Ratio)it + β2(Management Efficiency Ratio)it +
β3(Liquidity Ratio)it + β4(Asset Quality Ratio)it
+ β5(Investment to Asset Ratio)it + β6(Loan to
Asset Ratio)it + β7(Deposit to Asset Ratio)it + εit
(8)
Choice of Modelling
In panel data analysis, the Hausman specification test
(1978) is run for the selection of fixed effect or random
effect while the Breusch-Pagan Lagrange multiplier or LM
test is used to choose between the random effect model
and Pooled OLS. The nature of the data set used was a
short panel as this study was conducted for a short span
of time according to (Baltagi, 2008).
Description of Variables
Earlier research studies revealed that various proxies
were used to determine the lending rate. For this purpose,
the researcher used seven bank-specific explanatory
variables.
A brief description about each variable is given
below.
Hypothesis of Study
The following hypotheses are generated with
reference to earlier studies, (Arifi et al., 2014).
H0: Commercial bank’s specific inner factor should
Table 1: Description of dependent and independent variables
Independent Variables
Dependent
Variable
Variables
Measures
Notation
Lending rate of loan
(The average interest rate on lending at each
bank in percent)
BOZ (2010), “Survey on How Commercial
Banks Determine their Base Lending Rates,”
Bank of Zambia.
LNDR
Capital Adequacy Ratio
Tier 1 capital + tier 2 capital / Risk weighted
asset.
CAR
Management Efficiency Ratio
Expenses / Revenues
MER
Liquidity Ratio
Liquid assets / Current Liability.
LR
Assets Quality Ratio
Loan Loss Reserve / Net Loans
AQR
Investment to asset Ratio
Investment / total assets
ITA
Loan to asset Ratio
Loan / Total assets
LTA
Deposit to Asset Ratio
Total Deposit / Total Assets
DTA
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Zulfiqar Ali, Zahid Bashir, Muhammad Usman Arshad, Ahmed Ghazali, Muhammad Asif,
Fahad Najeeb Khan
Analysis of some inner factors affecting the lending rate and commercial bank behavior
have a positive effect on their lending behavior for the
period of study in Pakistan.
H1: Commercial bank’s specific inner factor should
have a negative effect on their lending behavior for the
period of study in Pakistan.
Regression Analysis and Discussion of Results
Table 2 expresses the summary of descriptive
statistics of all those variables included in the study. The
data consist of 19 commercial banks of Pakistan from
„e-Finanse” 2016, vol. 12 / nr 4
2007 to 2014.
The Table 2 shows that the average lending rate of
commercial banks in Pakistan is found to be 0.45 which
means on average lending rate contributes about 45%
of equity of financial banks. The table also indicates
that overall variation of the lending rate is about 60%.
Deposit to asset ratio on average (mean) value is 72.41%,
Investment to asset ratio on average (mean) value is
34.4%, liquidity ratio on average (mean) value 16.20%,
and loan to asset ratio contributes on average (mean)
value 10.98%.
Table 2: Descriptive statistics
Variables
Variations
Lending Rate
Capital Adequacy Ratio
Management Efficiency Ratio
Liquidity Ratio
Asset Quality Ratio
Investment to Total Ratio
Loan to Asset Ratio
Deposit to Asset Ratio
Obs.
Mean
STD
Min
T=8
0,481
-0,501
4,324
Between
n= 19
0,370
0,043
1,557
Overall
N= 152
0,601
0,006
4,622
Within
T=8
0,076
-0,278
0,798
Between
n= 19
0,094
0,064
0,489
Overall
N= 152
0,119
0,017
1,119
Within
T=8
0,129
0,435
0,668
Between
n= 19
0,164
0,523
1,129
Overall
N= 152
0,206
0,357
1,641
Within
T=8
0,051
0,041
0,389
Between
n= 19
0,048
0,104
0,622
Overall
N= 152
0,069
0,066
0,380
Within
T=8
0,496
-1,569
4,089
Between
n= 19
0,317
-0,227
1,228
Overall
N= 152
0,585
-1,168
4,571
Within
T=8
0,107
0,111
0,832
Between
n= 19
0,082
0,212
0,513
Overall
N= 152
0,134
0,108
1
Within
T=8
0,078
-0,076
0,787
Between
n= 19
0,054
0,029
0,280
Overall
N= 152
0,094
0,002
0,804
Within
T=8
0,036
0,537
0,823
Between
n= 19
0,064
0,556
0,775
Overall
N= 152
0,072
0,449
0,828
0,450
0,167
0,832
0,162
0,153
0,345
0,110
0,724
Source: the above values are reported from the output of STATA 11 software
116
Max
Within
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Fahad Najeeb Khan
Analysis of some inner factors affecting the lending rate and commercial bank behavior
For the purpose of determining the association
between all variables, the Pearson correlation with
P-values is analyzed and reported in the following Table
3 as below.
„e-Finanse” 2016, vol. 12 / nr 4
data consist of nineteen commercial banks for eight years
from-. The value of R2 shows that the overall
model is best fit and shows significant results. It shows
an insignificant relationship between capital adequacy
ratio and lending rate and accepts the 1st null hypothesis.
This result is consistent with the study of researchers like
(Georgievska et al., 2011) and (Bonner & Eijffinger, 2013).
Table 3 shows the association between variables
along with their significant values. The correlation matrix
represents the dependent and explanatory variables of
commercial banks of Pakistan for the period of-. This table indicates that capital adequacy ratio,
management efficiency ratio, liquidity ratio and asset
quality ratio are positively correlated with lending rate
while investment to asset, loan to asset and deposit to
asset ratios are negatively correlated with lending rate.
The above table also indicates that the highest correlation
exists between Liquidity ratio and lending rate of about
73.91%.
The regression result also shows an insignificant
relationship between Management efficiency Ratio and
average lending rate and accepts the 2nd null hypothesis.
This shows a consistent result with the study of (Arifi et
al., 2014). The Liquidity ratio shows a significant result,
it also expresses a positive significant relation with
lending rate. It accepts the 3rd alternate hypothesis. This
result is consistent with the studies of (Georgievska et
al., 2011) (Arifi et al., 2014) (Ngata & Njeru, 2015) and
(Bonner & Eijffinger, 2013). Asset quality Ratio is not
For the purpose of measuring the effect of inner
significant. It indicates that lending rate is not influenced
factors on lending behavior of the commercial banking
significantly by this in the banking sector. It accepts the
sector of Pakistan for the period of study 2007-14,
null hypotheses and rejects the 4th alternate hypotheses.
the researcher applied panel data models like fixed
This result consistent with the study of (Arifi et al., 2014).
effect, random effect and Pooled OLS. After verifying
Investment to asset ratio is significant at a 1% level and
from Hausman Specification (1978), the researcher
showing positive significant relationship with lending
concluded that the fixed effect model is appropriate in
rate. It accepts the 5th alternate hypothesis and is also
the current study. The coefficient values along with their
consistent with the previous researcher (Arifi et al., 2014).
corresponding P-values are reported in the following
Loan to asset ratio is significant at a 5% level. It shows
Table 4. In addition, the R-square, model fitness, and the
negative significant relationship between investment to
value of the Hausman Specification test (1978) has been
asset ratio and lending rate. It rejects the null hypotheses
reported as well in the same table.
and accepts the 6th alternative hypothesis; this result
Table 4 shows the results of the fixed effect model;
is consistent with the research study (Arifi et al., 2014).
Table 3: Correlation Matrix for Banking Sector
LNDR
CAR
MER
LR
AQR
ITA
LTA
LNDR
1
CAR
0,4217
0
1
MER
0,159
0,0504
0,1003
0,2187
1
LR
0,7391
0
0,5088
0
0,0335
0,6818
1
AQR
0,0398
0,6264
0,0091
0,9116
0,1516
0,0622
0,0604
0,4595
1
ITA
-0,1309
0,1079
0,1053
0,1969
-0,2083
0,01
-0,2745
0,0006
-0,0923
0,2582
1
LTA
-0,0321
0,6943
-0,0765
0,3486
0,125
0,125
-0,0254
0,7563
-0,2119
0,0088
0,1353
0,0965
1
DTA
-0,3421
0
-0,4197
0
-0,2367
0,0033
-0,3183
0,0001
0,04
0,6247
0,1077
0,1865
-0,4301
0
DTA
1
Source: The above values are reported from the output of STATA 11 software
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Zulfiqar Ali, Zahid Bashir, Muhammad Usman Arshad, Ahmed Ghazali, Muhammad Asif,
Fahad Najeeb Khan
Analysis of some inner factors affecting the lending rate and commercial bank behavior
„e-Finanse” 2016, vol. 12 / nr 4
Table 4: Results of Fixed Effect Model
Dependent variable= Lending Behavior (LNDR)
Independent
Variables
Coefficients
Std. Err.
t-values
P-values
CAR
0,-
0,445741
0,85
0,398
MER
-0,-
0,-
-0,9
0,37
LR
7,104665
0,-
11,08
*0.000
AQR
0,-
0,-
1,07
0,285
ITA
1,002042
0,-
3,49
*0.001
LTA
-1,032874
0,-
-2,65
**0.009
DTA
-2,195891
0,-
-2,57
**0.011
Constant
0,737846
0,-
1,09
0,276
Number of Observations
152
Number of Groups
19
F (7,126)
29,99
Prob > F
0
Hausman test
Prob > Chi2 = 0.0007
R-Square (within)
0,6249
R-Square (Between)
0,4851
R-Square (overall)
0,5372
*significant at 1%, **significant at 5%
Source: This output is generated through STATA 11
Deposit to asset ratio is significant at a 5% level. It
indicates the negative significant relationship with lending
rate. It accepts the null hypotheses and rejects the 7th
alternative hypothesis. This result is not consistent with
the result of (Arifi et al., 2014).
are also consistent with earlier studies. The banking
sectors should preferably increase the liquidity ratio and
investment to asset ratio as it will increase the lending
rate and ultimately strengthen the bank financial position.
Limitations and Suggestions
Conclusion and Recommendations
This study explored whether these variables
(liquidity ratio, investment to asset ratio, loan to asset
ratio and deposit to asset ratio) have significant effect
on lending rate on loans in the commercial banking
system of Pakistan. The commercial banking sector of
Pakistan should take into consideration all of the above
mentioned variables while making lending rate policies
as well as financial decisions. The current study findings
118
This study is only applicable in the banking system.
This study is not applicable to non-financial sectors as
well as financial sectors other than banking because their
capital structures are entirely different. This study ignores
the macroeconomic variables like inflation or GDP growth.
A future researcher may also conduct the study on other
financial sectors by using the same explanatory variables
or by increasing the macroeconomic variables.
www.e-finanse.com
University of Information Technology and Management in Rzeszów
Zulfiqar Ali, Zahid Bashir, Muhammad Usman Arshad, Ahmed Ghazali, Muhammad Asif,
Fahad Najeeb Khan
Analysis of some inner factors affecting the lending rate and commercial bank behavior
„e-Finanse” 2016, vol. 12 / nr 4
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