Business intelligence implementation in Croatian banking sector.
Pejic Bach, Mirjana ; Strugar, Ivan ; Jakovic, Bozidar 等
Abstract: Business Intelligence is one of the best new, innovative
'weapons' for the firms to gain competitive advantage. In this
paper main concentration was on data mining and data warehousing which
are among most often used business intelligence tools in banking
industry. A survey research has been conducted with aim to examine the
present implementation of business intelligence tools in the Croatian
banking system.
Key words: Business intelligence, bank industry, data mining, data
warehousing, Croatian banks
1. INTRODUCTION
In these days companies are leading no-mercy battle on global
market. In that 'battle' the main role have decision makers
with their crucial decisions. They need good and accurate
'weapon' In order to gain advantage over their competitors.
One of the best new, innovative 'weapons' is Business
Intelligence. Brackett (2001) notes that business intelligence is a set
of concepts, methods and processes to improve business decisions, using
information from multiple source and applying experience and adding
assumptions to develop an accurate understanding of business dynamics.
Hill and Terri (2004) in their study concludes that business
intelligence will likely lead to higher level of efficiency, higher and
better quality outputs, better marketing decisions and lessened risk of
business failure. But expectations of BI systems should be realistic
(Wu, 2001). Chou and Tripuramallu (2005) notes that business
intelligence software gains more acceptance as users at all levels of
the organizations realize all benefits of its decision support
capabilities and integrated with enterprise resource planning can
greatly improve the IT performance and decision-making capability.
Herschel and Jones (2005) are saying that in the future the
effectiveness of a business intelligence will be measured based on how
well it: (1) promotes and enhances knowledge, (2) improves the mental
model(s) and understanding of the decision maker(s) (3) improves
decision making and hence firm performance.
The main goal of the paper is to investigate the current level of
implementation of business intelligence tools in Croatian banks. An
efficient business intelligence system could decrease costs, increase
quality and efficiency of day-to-day business. Ultimately, this could
increase the competitive strengths of Croatian banks and thus increase
the stability of the banking system.
The hypotheses of the paper are: (1) most of Croatian banks do not
use business intelligence tools, and (2) banks that use business
intelligence tools have different characteristics than banks that do not
use them.
2. BUSINESS INTELLIGENCE TOOLS
According to experts from SAS company who is leader in providing BI
software and services, Business intelligence software must be fully
integrated and comprehensive suite for: (1) Reporting, (2) Query &
Analysis, (3)OLAP, (4)Integrated analytics, and (5)Visualization.
REPORTING--Company must provide fast, simple access to reports and
analysis to their decision makers. Every individual decision maker must
be able to generate reports on their own quick and easy through familiar
interface.
3. BUSINESS INTELLIGENCE TOOLS IN CROATIAN BANKS
A survey research has been conducted with aim to examine the
present implementation of business intelligence tools in the Croatian
banking system, and the possibility of their improvement for the purpose
of lowering operational cost of banks and maintaining the stability of
the banking system. Quite number of banks, 23 banks, from the total of
41 banks which operated in Croatia on 31 December 2003 took part in the
research. The research was performed in September 2004 using the
face-to-face interview method, and respondents were persons from the
information technology department who are best acquainted with the
application of advanced information technologies. Among advanced
information technologies most frequently used (Table 1) are Intranet
(86%), data warehousing (62%) and decision support systems (57%). Among
advanced information technologies mentioned in the paper, data mining
and data warehousing could be considered as business intelligence tools.
Data mining is used by 48% of Croatian banks, and data warehousing is
used by 62% of banks.
However, only 44% of the banks use both business intelligence
tools, which confirm the first hypothesis of the paper, that most of
Croatian banks do not use business intelligence tools. It can be
expected that larger and more successful banks possess and make better
use of their business intelligence tools. In examining this assumption,
t-tests of the means difference for characteristics of the banks
considering the existence of the project were applied, considering the
random sample of banks was available. Banks with business intelligence
tools and banks without it are compared by the following
characteristics: total assets, share in total assets, and growth of
assets, gross off-balance items, profit (loss) before taxes, capital
adequacy rate, and equity (Table 2).
T-test is performed to discover if there is a statistically
important difference between mean characteristics of the banks in
relation with a usage of business intelligence tools. It appears that
banks which use business intelligence tools have larger average total
assets (p-value=0.030934), a larger average share in the total assets of
the bank market (p-value =0. 030934), larger average gross off-balance
items (p-value =0.030934), larger average income (p-value =0.048209),
and larger average capital stock, but have a lower average capital
adequacy rate (p-value =0.046956).
4. DISCUSSION OF THE RESULTS
Banks that use business intelligence tools own a larger amount of
total assets, which illustrates their size because total assets of a
bank are expressed in their balance sheet, and show the investment of
the financial resources of the bank.
Banks which use business intelligence tools do business with a
somewhat lower risk than the other group of banks.
T-test is performed to discover if there is a statistically
important difference between mean characteristics of the banks in
relation with a usage of business intelligence tools. It appears that
banks which use business intelligence tools have larger average total
assets (p-value=0.030934), a larger average share in the total assets of
the bank market (p-value =0. 030934), larger average gross off-balance
items (p-value =0.030934), larger average income (p-value =0.048209),
and larger average capital stock, but have a lower average capital
adequacy rate (p-value =0.046956). This confirms the second hypothesis
of the paper that banks which use business intelligence tools have
different characteristics from the banks that do no use them.
5. CONCLUSION
The goal of the paper was to explore usage of business intelligence
tools in Croatian banks. We examined the possible business tools and
their usage in general, and than we explored their possible usage in
banks. The survey on usage of business intelligence tools in Croatian
banks was conducted. The results of the survey revealed that only 46% of
Croatian banks use both main business intelligence tools (data mining
and data warehousing). Banks which use business intelligence tools
differ from the banks which do not have such a system. They differ in
the following characteristics: size of total assets, participation of
their own assets in the Croatian banking sector, size of off-balance
items, size of income and capital stock and rate of capital adequacy. In
other words, project results shows that banks which use business
intelligence tools are larger and more successful.
In this we can see the results of positive feedback growth. Large
and successful banks invest more in information technology, especially
business intelligence in the purpose of more efficient business
reporting. By using business intelligence tools, these banks will use
their organizational knowledge even better, and consequently they will
become even more successful. This will make possible to invest even more
into advanced information technology. In the future research we shall
focus on purposes of usage of business intelligence tools.
6. REFERENCES
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Table 1. Usage of advanced information technologies in Croatian banks
Planned
Technology Used Not used for use
Intranet 86% 10% 4%
Data mining 48% 43% 9%
Data warehousing 62% 19% 19%
Knowledge based systems 14% 86% 0%
Decision support systems 57% 33% 10%
Group decision support systems 19% 71% 9%
Customer resource management 10% 71% 19%
Business process modeling 29% 61% 9%
Table 2. Comparison of bank characteristics in relation with the use
of business intelligence tools
Average of Average of
the banks the banks
that do not that use BI
use BI tools tools t-value df p-value
Total assets 1073375 12720784 -2,313 21 0,031 *
(000 kn)
Share in the 1% 6% -2,313 21 0,031 *
total assets
Growth of 13% 26% -1,114 21 0,277
assets
Gross 97592 1835644 -2,254 21 0,035 *
off-balance
items (000 kn)
Profit (loss) 11431 188623 -2,097 21 0,049 *
before taxes
(000 kn)
Capital 26 28 -0,215 21 0,832
adequacy rate
Capital stock 126262 920047 -2,110 21 0,0467 *
(000 [kn.sup.1])
* Statistically significant with the Type I. Error of 5%