3.1. Research in Progress
The study assesses the performance of 18 world banks during the period of 2013–2017 via a dynamic SBM model, which is presented in
Figure 1 to describe a common picture of researching the process according to the following steps:
Step 1: Selecting DMUs and collecting their relative information: From the beginning, global banks were determined to be a study object. This stage collected the information from eighteen banks all over the world [
35], and their input and output factors during the period time of 2013–2017 were chosen based on their annual reports posted on tmxmoney [
36]. With the aim to measure efficiency, the input and output factors were selected.
Step 2: Many models can compute the efficiency, but the dynamic SBM model is the first innovative scheme formally solved via inter-connecting activities. Thus, the research chose the dynamic SBM model to calculate the performance. From the defined variables in the Stage 1, we designed the structure of the dynamic SBM model in this study. Next, the mathematical equations were set up accordingly.
Step 3. Before applying the DEA model to formulate the values, the input and outputs variables had to be ensured to have a positive valuation. The inappropriate factors with negative values had to be reselected in order to meet the right qualification, and the appreciate variables were used for counting the scores. The empirical results indicated term efficiency and overall score. By the way, each large bank company determined efficiency/inefficiency for each term and whole term. Moreover, the dynamic SBM model presents the projections of variables, so the inefficient term can be improved through the input excesses, output, and desirable link shortfalls.
Step 4: Conclusion. The research summarizes the key finds, conducts contributions, and suggests future studies.
3.2. Data Source
Accordingly the source of the world’s top 100 banks [
35], based on their financial quotation within five years from 2013 to 2017, was posted on tmxmoney [
36]; the research selected 18 large banks from all over the world, as shown in
Table 1.
Selecting inputs and outputs is an important background task in manipulating DEA to measure the efficiency of DMUs. Based on the financial reports and the direction of the study, the researcher chose two variables of inputs and one output as below:
Assets (input): Tangible and intangible assets that enterprises own and control.
Capitalization (input): Capitalization is the net worth and the value to a bank’s investor.
Liabilities (input): Liabilities for a bank include mortgage payments for building, distribution payments to customers from stock, and interest paid to customers.
Revenue (output): Revenue is the total money that a bank actually receives during a specific operating period.
Net interest income (good link): The net interest income is generated from the interest earned on assets over the interest paid out on deposits, based on the excess revenue.
Assets, capital, liabilities, revenue, and net interest income are key financial indicators that can assess the potential development of an enterprise. Adopting the carry-over of dynamic SBM model, variables will be responded to their functions to estimate the efficiency of every term particularly. With the link, the net interest income is employed as carry-over between the end of each year and the beginning of the following year.
3.3. Dynamic SBM Model
Tone and Tsutsui [
30] researched and computed the theoretical aspects of the dynamic SBM model with the classification of carry-over activities that comprises of four categories including desirable, undesirable, discretionary and non-discretionary. In this study, we computed the efficiency of 18 large banks all over the world through treating desirable link. The bank company is set
over
terms
. For each term,
have
inputs
,
outputs
, and
desirable output
. Set
,
,
, and
indicate the observed (undesirable) input and desirable output values of
at term
. The symbolization of desirable link as
. Let the notation as
, where
is the number of desirable link. The dynamic structure of enterprise is descripted in
Figure 2. There are five consecutive terms, each term will deal with inputs and output variables, simultaneously the carry-over (link) will connect between two consecutive term.
The production possibility [
30] denotes
are given by:
where
is the intensity vector for the term
t. With the constant returns-to-scale,
and
on the right of the above are positive data,
and
on the left are variables that are connected by the intensity variable
.
When continuing to link (carry-over) between term
t and
t + 1, one must make sure the condition is met, as below:
The symbol stands for good link, the constraint is critical for the dynamic model when it connects term t and term t + 1 activities.
Having DMU
k (
k = 1, …,
n) and utilizing the production is shown as:
where
are slack variables, they are called input excess, output shortfall and good link shortfall. The overall efficiency of DMU will be computed by variables such as:
.
The output-oriented overall score is given as follows:
From Equations as (2), and (3), the weight to term
t and input
u are
, they must satisfy the below condition:
The output-oriented SBM model is in respect to output shortfall [
28] over the whole set data, the characteristics are also mentioned to the dynamic SBM model. Shortfalls in desirable link are given as output shortfalls because they have similar feature to output. The good link plays role in connecting two consecutive terms as demonstrated by the constraint. The efficiency of the term t is measured by the relative slacks of outputs and link.
With an optimal solution of
, then the efficiency is denoted by:
The weighted harmonic mean of the term efficiencies
is considered as the output-oriented overall efficiency during the period
as follows:
DMUk is called output-oriented efficiency at term t if . In this way, all optimal slacks for term t are zero i.e., , and the optimal solution also satisfies . In contrary, the DMUk does not have efficiency if and .
From these optimal solutions, the projection of
DMUk is determined as follows:
When the DMUk is projected, it will have an overall efficiency.
Equation (7), we determined the efficiency of each DMU; thus, the maximum efficiency of the dynamic SBM model is equal to 1, whereas the super-SBM model can reach efficiency of above 1 without a limitation for the highest score; furthermore, it can obtain a good distinguishing rate [
37], but it only solves with input and output factors. In contrary, the dynamic SBM model obtains the performance when its score is 1, so it is difficult to distinguish efficient DMUs; in addition, the data must be a positive number; if any valuation is negative, or zero, it must be removed or replaced by a small positive number. However, the dynamic SBM model can deal with input and output variables, i.e., simultaneous inter-connecting activities [
29]. Accompanying this rule, we show that the net interest income responds to the undesirable link; thus, it is not output that is used for inter-connecting activities with the role of connection of two consecutive terms.