dc.description.abstract |
Since last 30 years, Data Envelopment Analysis (DEA) (Charnes et al., 1978) has
become a powerful analytical and quantitative tool for measuring the performance of wide
range of similar organizations. It has been applied to a large number of different types of
profit/non-profit units that are engaged in a wide variety of activities worldwide. It is a dataoriented
approach for measuring the performance of a set of homogeneous peer entities called
Decision-Making Units (DMUs), which utilize multiple inputs to produce multiple outputs.
Numerous approaches for evaluating different efficiency measures have been developed in
DEA (Cooper et al., 2007). The advantage of DEA over the other performance measuring
techniques is that it does not require any prior assumptions concerning the shape of the
production frontier. DEA mainly focuses on achieving a single measure of production
efficiency for each DMU. However, in some real life applications, a DMU may perform
different types of functions and thus a DMU can be separated into different independent or
interdependent components or decision making sub-units (DMSUs). The study of a DMU with
its components is known as multi-component DEA (MC-DEA) (Amirteimoori and
Kordrostami, 2005b). In this approach, independent components constitute the parallel
structure whereas interdependent components constitute the series structure of the DMSUs.
Despite of several advantages, DEA and MC-DEA have some limitations. The biggest
problem is the sensitivity of these approaches to input-output data. Since these approaches are
based on frontiers, a very small change in input/output data can change the efficient frontiers
significantly. Thus, for successful application of DEA and MC-DEA, there is a need of
accurate measurements of the data values of inputs and outputs. However, in some real life
performance assessment problems, inputs used and outputs produced in a production process
are sometimes volatile and complex, and thus, involve difficulty while measuring the accurate
data in precise form. Moreover, in many real life applications, the input-output data may not
always be available in precise form. The data might be uncertain, i.e., data may include some
degrees of uncertainty or imprecision which cannot be defined precisely.
For better understanding of the above mentioned problem, take a real life situation of the
banking sector in India. The input and output variables of banks/branches may possess
uncertainties of interval or fuzzy or intuitionistic fuzzy forms as discussed below:
i. Granting a loan is a risky output because of the risk for a loan to eventually become a
bad (non-performing) loan. Bad loans directly affect the asset quality, credit creation,
profitability and performance of a bank. It is difficult to exactly measure how many
iv
normal loans might become bad and how many bad loans might become normal. Thus,
normal and non-performing loans and their respective prices possess fuzzy behaviour in
real situations.
ii. The income from investment of a bank varies daily on account of its market value
which changes daily. Thus, income from investments also possesses fuzzy
characteristics.
iii. The demand (more or less) for labour mainly depends on the factors like work
efficiency, work load, desire for work, skills and training etc., of existing labours. The
other aspects are prevailing market conditions and area of operation (urban/semiurban/
rural/industrial). The above mentioned factors lead to the fuzziness in the labour
data.
iv. In real situations, fluctuations in operating expenses, in particular, uncontrollable
expenses occur due to factors like temporary shutdown of branch’s operations due to
some unavoidable reasons, large number of bad loans, inflation, managerial inefficiency
etc. Thus, vagueness in operating expenses possess fuzzy or intuitionistic fuzzy
behaviour.
v. A higher bank management would be more interested in running a bank branch with
less employees in order to reduce its labour cost, whereas a branch manager may be
interested in having more employees at the disposal of the branch in order to
accommodate more customers, augment branch’s profit and handle day-to-day
increased workloads. That is, number of employees is likely to be an undesirable
attribute for the bank management, however a desirable attribute for the branch
manager. Thus, the difference of thought at management level and branch level may
lead to the existence of hesitation in the demand and availability of employees at branch
level. Hence, labour possesses intuitionistic fuzzy behaviour (Atanassov, 1986) at
branch level.
Certainly, crisp set theory is not appropriate to deal with such types of problems; rather
fuzzy set theory (Zadeh, 1965) and theory of interval numbers are more suitable. Thus, the
uncertainty in the input-output data of banks can be well represented by fuzzy numbers
(Zimmermann, 1996) or intuitionistic fuzzy numbers (Atanassov, 1986) or interval numbers.
Therefore, in this study, we have represented the input-output variables of banks/branches in
uncertain forms for analysing different efficiency measures in uncertain environments and to
evaluate banks’ efficiency more realistically and accurately.
The financial institutions like banks play a significant role in the economic development
and growth of a country. Therefore, in recent times, the performance of banks has become a
v
major concern of planners and policy makers in India. The growth and financial stability of the
country mainly depends on the financial soundness of its financial institutions. Since early
1990s, the Indian banking sector has noticed various changes in the policies and prudential
norms to raise the banking standards in India. In this regard, major changes took place in the
functioning of banks in India only after nationalization and liberalization. The problem of
NPAs in Indian banking sector was ignored for many years but recently it has been given
considerable attention by the bank experts and researchers after the post reform period of the
banking sector in India. The maintenance, control and recovery of NPAs (bad loans) are very
much needed for well functioning of the banks in India. Since credit is essential for economic
growth in the country but NPAs beyond a certain level affect the smooth flow of credit and
credit creation. Apart from this, NPAs also affect profitability of the banks because higher
NPAs require higher provisioning, which means a large part of the profits is needed as a
provision against NPAs. Therefore, gauging the problem of NPAs has become a major concern
of the bank experts as well as policy makers who are engaged in the economic growth of the
country. Therefore, in this study, we have treated NPA as an undesirable output and applied the
proposed DEA methodologies in uncertain environments to the Indian banking sector. The
banks that are considered in this study are public sector banks (PuSBs) and private sector banks
(PrSBs), and the period of study ranges from 2008 to 2013.
Finally, this study is motivated by the following observations: (1) a greater need to
extend DEA and MC-DEA to fuzzy and fully fuzzy environments in order to accommodate real
life applications more realistically, (2) a need to incorporate undesirable factors into the
production processes of DEA and MC-DEA in crisp as well as uncertain environments, (3) a
need to pay attention towards measuring the DEA and MC-DEA performance of Indian
banking sector in the presence of undesirable outputs, and (4) a dearth of studies of banking
sector in India for measuring different efficiency measures like technical, mix, multicomponent,
cost, revenue, optimistic and pessimistic efficiency measures in uncertain
environments.
The chapter-wise summary of the thesis is as follows:
Chapter 1 is introductory in nature. This chapter includes some basic definitions, notions
and operations in fuzzy set theory (Zimmermann, 1996), intuitionistic fuzzy set theory
(Atanassov, 1986) and uncertain/imprecise data (Cooper et al., 2001) forms used throughout
the work. It also presents brief review of the work done in the areas of DEA, MC-DEA, FDEA
and bank efficiency in India. It also presents the different approaches available in literature for
vi
the selection of input and output data variables for bank efficiency. It includes the input and
output variables selected in the present study.
Chapter 2 includes the comparative analysis of two important categories of banks in
India, namely, PuSBs and PrSBs, and their respective categories. This chapter seeks to measure
the overall technical, pure technical and scale efficiencies of PuSBs and PrSBs for the year
2009-2010 using conventional DEA methodology (Cooper et al., 2007). It determines the bank
group-wise, category-wise and size-wise variations in the efficiency scores of all the banks. It
also examines the returns-to-scale, input/output slacks and benchmarks for relatively inefficient
banks. Further, sensitivity analysis is performed to ensure the validity and robustness of the
efficiency results. The key findings and some concluding remarks and suggestions for the
policy makers and bank experts are also provided to improve the performance of all the
categories of PuSBs and PrSBs in India.
Chapter 3 includes the multi-component performance analysis of PuSBs in India and
their categories in terms of two components such that the first component deals with the
productivity whereas the second component deals with the profitability. This chapter aims to
measure the aggregate performance and component-wise performance for every PuSBs and
their categories for the period 2008-2013 using the conventional MC-DEA methodology
(Amirteimoori and Kordrostami, 2005b), and to analyse the effect of productivity and
profitability on aggregate performance of each PuSB. It also examines the average
inefficiencies present in each component. Further, sensitivity analysis is performed to validate
the use of MC-DEA instead of DEA and to ensure the robustness of the efficiency results. The
findings are quite useful for planners and policy makers in order to identify efficiencies and
weaknesses present in either productivity phase or profitability phase or both, and to suggest
some directions for improvement in each component of PuSBs.
In Chapter 4, input- and output-oriented CCR and SBM DEA models (Cooper et al.,
2007) are extended to fuzzy environments in which input-output data are taken in the form of
fuzzy numbers, in particular, triangular fuzzy numbers (TFNs) (Zimmermann, 1996). The
proposed input- and output-oriented fuzzy CCR and fuzzy SBM models are then transformed
into the family of crisp DEA models by using the α – cut approach (Kao and Liu, 2000a) for
measuring the fuzzy CCR and fuzzy SBM input and output efficiencies in fuzzy DEA (FDEA),
where α represents the satisfaction level of the decision maker. Further, the concept of mixefficiency
is extended to fuzzy environment for measuring the fuzzy input and output mixefficiencies
of the DMUs in FDEA. The ranking of DMUs on the basis of the different
efficiency measures are obtained by using defuzzification method (Kataria, 2010). A new
vii
ranking method is developed to rank the DMUs on the basis of fuzzy input mix-efficiency.
Numerical illustration is provided to ensure the validity of the proposed approach. An
application of the proposed approach to the State Bank of Patiala in the Punjab State of India
with districts as the DMUs for the period 2010-2011 is presented to ensure its acceptability in
real situations.
Chapter 5 endeavours to propose a DEA model in the presence of undesirable outputs
and further to extend it in fuzzy environment in view of the fact that precise input/output data
may not always be available in real life problems. In this chapter, a FDEA model with
undesirable fuzzy outputs is developed which is further transformed into a crisp linear program
by using an α – cut approach of Saati et al. (2002). To increase the discrimination power of the
proposed models, ranking algorithms based on cross-efficiency technique (Adler et al., 2002)
are presented. To ensure the validity and effectiveness of the proposed FDEA methodology, a
numerical illustration and an application to PuSBs in India for the period 2009-2011 are
presented. The practical implication of this chapter is that the results obtained from the
proposed FDEA approach are quite robust and effective to recognize the impact of undesirable
output (NPA) on the performance of PuSBs in India for different values of (0,1] along
with the effect of the uncertainty present in the input-output data over the efficiency results.
The findings are enormously valuable for the bank experts and policy makers to identify the
average inefficiencies in PuSBs at different α – levels, and to suggest directions for their
improvements.
In Chapter 6, we have incorporated the undesirable outputs into the production
technology of DEA, and have represented all the input-output data in uncertain/imprecise forms
like intervals or ordinal relations or fuzzy numbers to reflect inherent uncertainty of real
applications. This chapter involves the development of the new improved DEA models in the
presence of undesirable outputs and interval data to find interval efficiencies of the DMUs
based on interval arithmetic and unified production frontier. For incorporation of uncertain data
of ordinal and fuzzy forms in the new DEA models with interval data, we use their interval
estimations (Aliakbarpoor and Izadikhah, 2012; Azizi, 2014; Wang et al., 2005). The new
models measure the final efficiency of each DMU as (i) an interval bounded by the best lower
and the best upper bound efficiencies for interval and ordinal data, and (ii) a fuzzy number for
fuzzy data having α – cuts as the intervals. Moreover, comparison with the existing approaches
of Farzipoor Saen (2010) and Aliakbarpoor and Izadikhah (2012) show that the new improved
models are theoretically accurate, numerically efficient and measure less number of DMUs as
efficient than the existing models. In addition, some numerical examples with different data
viii
sets and an application to PuSBs and PrSBs in India for the period 2012-2013 are presented to
validate the acceptability of the improved models.
In Chapter 7, owing to the importance of internal structure of the DMUs in practical
applications, we have proposed MC-DEA approach with uncertain data in the presence of
undesirable outputs and shared resources. The intervals and ordinal relations in the study
represent the uncertain data forms. To solve the MC-DEA model with uncertain data, we have
developed a new common set of weights methodology by using interval arithmetic and unified
production frontier. The new approach evaluates a common set of weights to measure interval
efficiencies of the DMUs as well as their components. The final aggregate efficiency interval
for each DMU is bounded by the best lower and best upper bound efficiencies. Numerical
example is presented to validate the effectiveness of the proposed approach. Compared with the
existing approaches of Amirteimoori and Kordrostami (2005a) and Ashrafi and Jaafar (2011),
the results by the proposed approach are quite robust and effective. Moreover, we have
presented an application of the proposed approach to PuSBs in India for the period 2011-2013
in order to ensure its acceptability in real life applications. This is the first study in Indian
context to investigate the performance of each PuSB in terms of two distinct components,
namely, general business and bancassurance business. The findings of the present study are
valuable for the bank experts to identify weaknesses associated with aggregate performance
and components’ performance of each PuSB, and to provide feasible improvement measures
for their growth.
In Chapter 8, we have extended the classical cost efficiency (CE) and revenue efficiency
(RE) models (Cooper et al., 2007) to fully fuzzy environments in order to accommodate the
real life situations, where input-output data and their corresponding prices are not known
precisely. Owing to the importance of the existence of undesirable outputs, we have also
incorporated these into the production technologies of the proposed models. This chapter
endeavours to propose fully fuzzy CE (FFCE) and fully fuzzy RE (FFRE) models, where inputoutput
data and prices include uncertainty of fuzzy forms, in particular, of triangular
membership forms. Further, the concepts of fully fuzzy linear programming problems
(FFLPPs) (Nasseri et al., 2013) and linear ranking function (Maleki, 2002) are employed to
transform FFCE and FFRE models into the crisp LPPs, and to assess fuzzy CE and fuzzy RE
measures of every DMU as TFNs in fully fuzzy DEA (FFDEA). The proposed models in
FFDEA are then exemplified with an application to PuSBs in India for the period 2011-2013 in
order to present their acceptability and effectiveness in real world systems. As per the
consideration of fully fuzzy situations in this chapter, the findings of the study provide
ix
additional information to the bank experts that will further assist them to deal with uncertainties
of real life problems and to do healthy improvements with the objectives of cost minimization
and revenue maximization in PuSBs of India.
In Chapter 9, we have extended FDEA to intuitionistic fuzzy DEA (IFDEA) to
accommodate inputs and outputs of subjective, linguistic and vague forms possessing
intuitionistic fuzzy essence (Atanassov, 1986) instead of fuzziness in real life applications. This
extension involves the proposal of IFDEA models to measure optimistic and pessimistic
efficiencies in intuitionistic fuzzy environments with inputs and outputs represented by
triangular intuitionistic fuzzy numbers (Mahapatra and Roy, 2009). We have developed
algorithms based on super-efficiency technique (Andersen and Petersen, 1993) to obtain
complete ranking of the DMUs on individual optimistic and pessimistic situations. Further, we
have proposed two alternate ranking methods based on the levels of inefficiencies and
efficiencies respectively to achieve complete ranking of the DMUs when both the optimistic
and pessimistic situations are considered simultaneously. We have also designed a hybrid
IFDEA performance decision model for true decision process. To ensure the validity of the
proposed IFDEA methodology and ranking methods, we have presented some numerical
examples with different input-output data sets. Further, we have compared our ranking results
with an existing ranking approach based on geometric average efficiency index (Wang et al.,
2007). To validate the acceptability of the proposed IFDEA approach, we have presented its
application to the branches of State Bank of Patiala in Amritsar district of the Punjab State in
India for the period 2010-2011.
In last chapter 10, conclusions are drawn and future extensions of the research work are
suggested. This chapter also includes a summary of findings, conclusions and
recommendations for the policy considerations along with some suggestions for improvements. |
en_US |