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Assessing Benefits of Business Intelligence Systems – A Case Study

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borut.hocevar@melamin.si
borut.hocevar@melamin.si
borut.hocevar@melamin.si

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Several arguments can be found in business intelligence literature that the use of business intelligence systems can bring multiple benefits, for example, via faster and easier access to information, savings in information technology (‘IT’) and greater customer satisfaction all the way through to the improved competitiveness of enterprises. Yet, most of these benefits are often very difficult to measure because of their indirect and delayed effects on business success. On top of the difficulties in justifying investments in information technology (‘IT’), particularly business intelligence (‘BI’), business executives generally want to know whether the investment is worth the money and if it can be economically justified. In looking for an answer to this question, various methods of evaluating investments can be employed. We can use the classic return on investment (‘ROI’) calculation, cost-benefit analysis, the net present value (‘NPV’) method, the internal rate of return (‘IRR’) and others. However, it often appears in business practice that the use of these methods alone is inappropriate, insufficient or unfeasible for evaluating an investment in business intelligence systems. Therefore, for this purpose, more appropriate methods are those based mainly on a qualitative approach, such as case studies, empirical analyses, user satisfaction analyses, and others that can be employed independently or can help us complete the whole picture in conjunction with the previously mentioned methods. Since there is no universal approach to the evaluation of an investment in information technology and business intelligence, it is necessary to approach each case in a different way based on the specific circumstances and purpose of the evaluation. This paper presents a case study in which the evaluation of an investment in on-line analytical processing (‘OLAP’) technology in the company Melamin was made through an analysis of users' opinions along with a strategic analysis based on identifying a cause-and-effect relationship between the benefits of OLAP technology and the company’s strategic goals.
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ASSESSING BENEFITS OF BUSINESS INTELLIGENCE
SYSTEMS – A CASE STUDY
Borut Hočevar*
Jurij Jaklič**
Received: 01. 10. 2009 Case study
Accepted: 03. 03. 2010 UDC 658.012.34
Several arguments can be found in business intelligence literature that the use of
business intelligence systems can bring multiple benefits, for example, via faster
and easier access to information, savings in information technology (‘IT’) and
greater customer satisfaction all the way through to the improved competitiveness
of enterprises. Yet, most of these benefits are often very difficult to measure
because of their indirect and delayed effects on business success. On top of the
difficulties in justifying investments in information technology (‘IT’), particularly
business intelligence (‘BI’), business executives generally want to know whether
the investment is worth the money and if it can be economically justified. In
looking for an answer to this question, various methods of evaluating investments
can be employed. We can use the classic return on investment (‘ROI’) calculation,
cost-benefit analysis, the net present value (‘NPV’) method, the internal rate of
return (‘IRR’) and others. However, it often appears in business practice that the
use of these methods alone is inappropriate, insufficient or unfeasible for
evaluating an investment in business intelligence systems. Therefore, for this
purpose, more appropriate methods are those based mainly on a qualitative
approach, such as case studies, empirical analyses, user satisfaction analyses, and
others that can be employed independently or can help us complete the whole
picture in conjunction with the previously mentioned methods. Since there is no
universal approach to the evaluation of an investment in information technology
and business intelligence, it is necessary to approach each case in a different way
based on the specific circumstances and purpose of the evaluation. This paper
presents a case study in which the evaluation of an investment in on-line analytical
processing (‘OLAP’) technology in the company Melamin was made through an
* Borut Hočevar, MSc, Melamin d.d. Kočevje, Tomšičeva 9, SI-1330 Kočevje, Phone: +386-1-
8959- 352, Fax: +386-1-8959-482, E-mail: borut.hocevar@melamin.si
** Jurij Jaklič, PhD, Associate Professor, University of Ljubljana, Faculty of Economics,
Kardeljeva ploščad 17, Phone: +386-1-5892-509, Fax: +386-1-5892-698, E-mail:
jurij.jaklic@ef.uni-lj.si
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Management, Vol. 15, 2010, 1, pp. 87-119
B. Hočevar, J. Jaklič: Assessing benefits of business intelligence systems – A case study
analysis of users' opinions along with a strategic analysis based on identifying a
cause-and-effect relationship between the benefits of OLAP technology and the
company’s strategic goals.
1. INTRODUCTION
Effective and timely business information is recognised as being essential
for organisations to not only succeed but even to survive in today's rapidly
changing business environment (Lönnqvist & Pirttimäki, 2006, p. 32).
According to Pisello and Strassmann (2003, p. 13.), competitive advantages
have shifted from those with expertise in how to implement new technologies,
through those who know how to use technology to improve business processes,
to those who know how to use technology to share, manage and increase the
level of knowledge.
New informational needs have led to changes in decision-making processes
within organisations. Managers seeking to preserve the competitiveness of their
enterprises cannot and should not rely solely on intuition. Decision-making
must be well supported by information about events within the organisation and
in its environment. Organisations need reliable information systems that enable
analysts and managers access to the information required for quality and
effective decision-making (Puklavec, 2001, p. 1).
No matter what type of data is processed by an information system and
how this is done, the objectives are largely the same: the information the user
receives from the system must be high quality which, among other things,
includes accuracy, timeliness and clarity. We can look at the importance of
good information as the difference between the values of a good or bad decision
where the decision is based on that information.
The greater the difference between the effects of good and bad decisions,
the greater the importance of access to quality information (Thomsen, 1997, p.
5). Burn & Knight (2005) and Eppler (2006) have found about 30 conceptual
frameworks of information quality that define and categorize quality criteria for
information (i.e., terms that describe information characteristics which make
information useful for its users) in various application contexts. Moreover,
ensuring and evaluation of information quality can be facilitated through
existing controls frameworks, such as COBIT and/or the IT Infrastructure
Library (ITIL). The frameworks, as an umbrella concept, can provide standards,
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B. Hočevar, J. Jaklič: Assessing benefits of business intelligence systems – A case study
benchmarks, and metrics that can be used by the information systems audit
function (Merhout & Havelka, 2008).
To ensure a high-quality basis for taking business decisions, a huge amount
of data must be converted into useful information. Moreover, it is exactly the
ability to convert masses of opaque data into useful information in the shortest
possible time that offers today's companies a significant competitive advantage.
One of the technologies allowing managers to do this is business intelligence. In
a broader sense, business intelligence is sometimes defined as a managerial
philosophy, but in a narrower sense, it is information technology that helps
organisations manage business information with the goal of arriving at effective
business decisions.
In this context, business intelligence actually involves very little that is new
as it solves old problems that managers have always been occupied with. It
represents a basic managerial task – analysing a complex business environment
in order to make the best possible decisions. However, a true novelty of
business intelligence is its ability to present business information in a fast,
simple and efficient way so that users can understand the logic and meaning of
business information by employing a wide range of analytical possibilities and
ad-hoc queries.
In literature, from the business intelligence field, it is argued that the use of
business intelligence systems can bring numerous benefits. Business
intelligence can offer certain competitive advantages to companies since it
generally provides greater functionality in terms of the access to and analysis of
data compared to enterprise resource planning (‘ERP’) systems. In the context
of customer relationship management (‘CRM’), business intelligence means the
analytical processing of information about customers and their behaviour with
the goal of optimising the management of relationships with customers by
maximising their satisfaction and enhancing their loyalty and profitability.
Integrated strategies for implementing business intelligence enable companies
to develop excellence in their customer relationship management, thereby
achieving a significant competitive advantage (Hall, 2004, pp. 1). However, it is
also necessary to add that the introduction of business intelligence in practice
requires many resources and that it is often very difficult to precisely define its
benefits.
By looking for appropriate information solutions, modern businesses often
face decisions associated with investments in information technology. A
fundamental question concerning these investments, just like with any other
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type of investment, is whether it is worth the money. Several methods are
available to evaluate investments in general, such as the net present value
(‘NPV’) method, the internal rate of return (‘IRR’) method, cost-benefit
analysis, the total cost of ownership (‘TCO’) method and others. However,
unlike many other investments, when evaluating investments in information
technology, the effects are not seen directly in higher sales figures, profits, etc.
and so the analysis should also include a substantial degree of forecasting the
future (Turk, 2005, p. 153).
As a result, the economic justification of investments in information
technology in general, and especially in business intelligence, is still a
complicated topic that is open to discussion and different views. When
evaluating investments in business intelligence systems, the specifics of this
area must be taken into account. Namely, business intelligence provides
information for more effective decision-making and management. The benefits
of an investment in business intelligence are often very complex and difficult to
measure. They range, for example, from faster and easier access to information
for decision-making, through to improved public relations and a better
reputation of the company in the eyes of business partners, a dimension which
is largely very difficult to evaluate.
The purpose of the contribution is to fully address the issue of evaluating
investments in business intelligence systems. By examining a concrete example
of the introduction of OLAP technology in the company Melamin d.d. Kočevje,
Slovenia and analysing the benefits, we will evaluate the justification of the
investment in this technology.
Section 2 briefly presents business intelligence, business intelligence
systems, and their characteristics where they are considered as an investment.
The key categories of potential benefits are also described. Section 3 describes
the purpose, problems and possible ways of evaluating investments in business
intelligence. A case study in which we analyse the benefits of introducing a
business intelligence system in the company Melamin is presented in Section 4.
Section 5 contains summary findings and conclusions.
2. BUSINESS INTELLIGENCE SYSTEMS AS INVESTMENTS
2.1. Business Intelligence systems
With all the data available, at first sight it may seem surprising that
managers often find it difficult to obtain basic business information such as
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stock levels, pending orders, the history of individual customers, sales trends
and similar. In many cases, key account managers need hours or even days to
obtain the answers to such questions. Information about orders, for example,
may be stored in a system for orders and sales processing, payment data in the
accounting system, and information on past and planned activities and contacts
with individual customers in the CRM system. These systems are often
designed completely separately and an exchange of information between them
is impossible, at least not in the short term and by the average user.
Consequently, there is no simple way of non-technical users quickly obtaining
the desired information.
The result is that the necessary information (usually in the form of different
reports) must be obtained from various departments and employees. This often
requires the co-operation of employees from the IT department, who are
requested to make complex queries from different databases in order to provide
the requisite data. In extreme cases, the collection of such information can take
several days or even weeks, a period in which much of the information may
become too old to still be useful. The remark that organisations are rich in data
but poor in information seems completely appropriate. The challenge is how to
transform data into useful information (Carver & Ritacco, 2006, p. 3).
In recent years, the ability to obtain useful information in real time has
become an extremely important, if not even a critical, factor of success for
companies. The time managers have available for making business decisions
has been drastically reduced. Competitive pressures require businesses to make
intelligent decisions based on their incoming business data, and these decisions
must be made quickly (Business Intelligence and Data Warehousing, 2005, p.
5). The usual problem is not a lack of data, but the opposite – a huge amount of
data must be converted into useful information in a timely manner in order to
provide managers a solid basis for their decisions. The ability to convert non-
transparent data into useful information in real time can offer a company a
significant competitive advantage.
The tool that enables managers to do this is business intelligence. Given
the rapid pace of today's business environment, these systems have become an
almost indispensable part of the success of an organisation. With the help of
business intelligence, managers can quickly and effectively detect important
trends, analyse the behaviour of customers and facilitate expedient decision-
making.
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Business Intelligence is a broad concept which includes the appropriate
orientation of the entire organisation. It deals with the acquisition, management
and analysis of large amounts of data about business partners, products,
services, customers and suppliers, activities, and transactions between them (Lu
& Zhou, 2000, p. 3). In other words, it is an organised and systematic process
by which an organisation acquires, analyses and circulates information from
internal and external sources which is relevant to its business activities and
decision-making (Lönnqvist & Pirttimäki, 2006, p. 32). It is a comprehensive
concept, whereby an entire organisation is committed to use the available
information systems (including business intelligence) in the most effective way
with the aim of obtaining quality and timely information for decision-making,
thereby creating competitive advantages. Such a concept must be supported by
the senior management of a company and extended throughout the organisation.
However, Business Intelligence systems include information tools which
help users obtain the required information efficiently and easily. Examples of
analytical tools for real-time data processing are On-Line Analytical Processing
(‘OLAP’) and data mining tools. It encompasses software that allows users to
convert masses of opaque data into useful information, at the same time
allowing users to create their own inquiries, reports and viewing modes, which
puts business intelligence systems one step ahead of classical transactional
(‘OLTP’) information systems.
A business intelligence system is usually not a single application but
consists of different components closely related to each other, enabling users to
select and analyse data, make aggregations and display the results in a form that
is easy to use and understand. From the architecture point of view, such a
system consists of:
Operational and external databases as data sources.
The Extract, Transform, Load process, which includes: the collection of
data from various sources, checking for errors, transforming into a
unique form and saving to a data warehouse.
A data warehouse (in various forms) represents the central database for
an entire company for storing and accessing data and is separated from
operational systems.
Tools for data access and analysis (analytical tools): they translate the
data into information. The most common types of analytical tools
include: query tools, reporting tools, OLAP tools, data mining, control
panels, advanced analytical solutions (What-if scenarios, optimisation,
statistical analyses, etc.).
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This article focuses on OLAP technology. An essential characteristic of
OLAP is that users can constantly adapt analyses to their current requirements.
OLAP is therefore important for management information systems as it allows
in-depth analyses of data across different dimensions, providing high quality
information from a pool of heterogeneous data. It should be noted, however,
that the OLAP concept really means the user interface and not the form of data
storage. The maximum effectiveness of these tools is achieved if data is stored
in multidimensional databases.
2.2. Investments in Business Intelligence
The implementation of business intelligence and the corresponding data
warehouses is a complex process, which differs from case to case. However, it
is always important that the decision on such an investment be economically
justified. It would make no sense to introduce such expensive systems just to
stay in touch with the latest technology trends. Every planned business
intelligence solution must be justified by the potential benefits (like increased
profit or greater efficiency) it can bring to the organisation. The following four
components of the justification of an investment in business intelligence are
stated by Atre & Moss (2003, p. 31):
Business factors: it is essential to identify the business reasons for
implementing business intelligence (‘BI’), the strategic goals of the
company, and application goals of the planned solution. The goals of
the BI solution must be in line with the strategic goals of the company.
Requirements of business analyses: the information needed for
achieving strategic goals and for decision-making must be defined. This
information is intended for upper management.
Cost and benefit analysis: an evaluation of the costs of implementation
and maintenance of the BI system, and a definition of the expected
benefits. Tangible and measurable benefits of BI must be financially
evaluated, while intangible benefits and their positive effects for the
entire organisation must be defined in a qualitative way.
Risk assessment: a definition of risks regarding the technology, the
complexity of the system, integration into the business and existing
information systems, the project team and financial investment.
Investments in business intelligence have a closed loop connection with the
strategic objectives of the company: in order to assure that business intelligence
solutions can support the strategic objectives of the organisation, they should be
part of the business strategy and have a clearly defined purpose. As stated by
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Carver & Ritacco (2006, p. 19), one of the key criteria when making decisions
about investing in business intelligence should be whether the investment
supports the business strategy.
Two groups of factors affect the success of a company: factors from its
internal and external environments. The company should know, for example,
how much it is spending on research and development, what the life cycle is of
its products, what its revenue and profitability levels are, how efficient the
production process is, and how successful its employees are in sales and
marketing. One can identify several key success factors that help management
understand the situation within the company. The purpose of most business
intelligence systems is exactly to provide an insight into and an understanding
of the internal business environment. Already at first sight, it is clear that this is
only part of the necessary information – the company must also be aware of its
external environment in order to achieve strategic advantages.
As Jaklič & Popovič (2009, p. 2) state, various recent international studies
show a high level of awareness of professionals about the potential benefits of
business intelligence in their business operations. For the fourth consecutive
year, business intelligence remains a top IT priority of major international
companies, while improved efficiency and operational performance are a key
business priority for the fifth year in a row. Many companies have positioned
business intelligence and business performance management (‘BPM’) as their
top strategic priority for 2009 and 2010.
2.3. Potential benefits of using Business Intelligence systems
Business intelligence technology enables users to quickly understand
complex information so that they can make better and faster decisions and
thereby efficiently achieve business goals. Key benefits that business
intelligence aims to create are the increased efficiency and effectiveness of the
organisation. Some business intelligence solutions enable a faster flow of and
easier access to information within the organisation (for example, by facilitating
the means of creating, modifying and distributing standard reports). Some other,
more recent solutions are based on a more aggressive approach that in certain
cases requires a redefinition of existing processes and their optimisation, which
can create new, previously unknown possibilities and opportunities (Lokken,
2001, p. 1).
Users and experts generally agree that business intelligence systems give
companies certain advantages and benefits that are difficult to define precisely.
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Some benefits are more or less directly visible such as the greater flexibility of
users by creating reports, faster access to and a better overview of data, and so
on. Other benefits are less obvious and it is hard to determine whether they are
actually a result of the use of business intelligence or something else (for
example, it may be difficult to figure out what really contributed to the
increased income in the last quarter). Of course, the truth may also lie
somewhere in between, so a certain improvement could be partly the result of
the use of business intelligence and partly the result of other factors.
Here, the question arises of how to measure the benefits of business
intelligence, whereby there is already a problem of how to determine the
benefits themselves. As we will see later, it is even more difficult to measure or
evaluate these benefits in such a way that supports an evaluation of the
justification of an investment in a business intelligence system. Similar
problems arise with investments in information technology in general. In any
case, let us now look at the commonly agreed benefits of business intelligence.
Due to the wide applicability of business intelligence in both the internal
and external business environments, organisations can enjoy many benefits.
Thompson (2006, p. 1), for example, lists the following benefits business
intelligence brings to companies: (1) faster and more accurate reporting; (2) an
improved decision-making process; (3) improved customer satisfaction; (4)
increased revenues; (5) savings in IT; and (6) savings in other areas (in addition
to information technology).
There are, of course, many other definitions of the benefits of business
intelligence. Carver and Ritacco (2006, p. 6), for instance, divide them into four
groups: (1) lowering costs; (2) increasing revenue; (3) improving customer
satisfaction; and (4) improving communication within the company. In addition
to these four groups, one of the most frequently mentioned benefits of business
intelligence is support for better decision-making, which Carver and Ritacco
(2006, p. 11) actually include within the third group (increasing customer
satisfaction). Similarly, Atre & Moss (2003, p. 39) categorise the benefits of
business intelligence as: (1) an increase in revenue; (2) an increase in profit; (3)
improved customer satisfaction; (4) a reduction of costs; and (5) an increase in
market share.
With business intelligence, we can find the causes of certain problems as
well as identify and analyse the key success factors. This process begins with an
analysis of a broader report, like general sales figures, where we try to discover
the causes (why?) of certain problem situations. This task requires several
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stages before arriving at the essence of the problem (Figure 1). Users can drill
down into the content of the original report and thus come to the smallest and
most detailed information in order to reveal the underlying causes of individual
events or the current situation. Once they know the cause, they can take
effective action in the opposite direction either to correct problems or to
maintain good practice and maybe extend it to other areas.
Why are sales below target? Because we sold less in Western markets
Why did we sell less there? Because sales of product X dropped
Why did X sales drop?
Why did complaints go up?
Because customer complaints increased
Because late deliveries went up by 60%
Question Answer
Action: Fix the delivery problem
Figure 1. The use of BI: Open questions into specific answers
(Carver & Ritacco 2006, p. 9)
3. EVALUATING INVESTMENTS IN BUSINESS INTELLIGENCE
SYSTEMS
3.1. The purpose of evaluating investments in Business Intelligence
systems
An important aspect of the question of what and how to measure and
evaluate is to know the purpose of the evaluation. The evaluation of investing in
business intelligence systems usually serves two main purposes: first, to prove
that it is worth the money and, second, to help manage the BI process so that the
BI solution satisfies the users' needs and that the process is efficient (Lönnqvist
& Pirttimäki, 2006, p. 33).
The first and most common purpose of an evaluation is to demonstrate that
the BI is worth the investment. The IT department, for example, reports to the
management about the costs and benefits of various IT projects. Investments in
IT, like all other types of investments, should be commercially viable in the
eyes of management. The word ‘‘economic’’ can be understood very concretely
here, namely, whether the investment is worth the money or not. All the
complications of determining the economic viability of an investment involve
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two problems: in most cases, the effects of an investment in IT are not seen
directly in higher profits since the effects are often indirect.
One way to justify an investment is, for example, to calculate the return on
investment (‘ROI’). It is often hard to prove the rationality and justification of
an investment in BI because it is a technology whose benefits are often difficult
to measure and anticipate. Most experts therefore agree that classical financial
methods such as ROI do not represent the best approach to justify investments
in business intelligence, mainly due to the intangible nature of the benefits
offered by business intelligence. These methods do not provide satisfactory
results, which are also extremely difficult to obtain (Carver & Ritacco, 2006, p.
16).
The second purpose of measuring the effects of business intelligence is to
provide information that helps manage the process of business intelligence,
which means ensuring that business intelligence solutions meet the needs of
users and that the process is effective. Business intelligence can, in fact, be very
expensive if the information it provides is not accurate or does not match
information needs. Such a follow-up of business intelligence effects should
normally be carried out by IT experts, with the main purpose being a continuous
improvement of products and the business intelligence process.
In addition, it is necessary to determine to whom the IT solution represents
a value at all. The perceived value of IT solutions is very likely to vary
according to the subjective assessment and needs of the individual concerned.
Here, we look at the value of IT from the perspective of companies that use IT
and BI solutions (e.g. increased profit as a result of using IT tools), as well as
from the perspective of users (such as how they perceive the usefulness of BI).
Besides, sometimes some want to show that IT as such does not represent any
value at all because it creates value only as a result of the use of information
tools when measures are taken and decisions made. This is actually the
approach that says the value of IT can only be determined indirectly. In this
context, we could speak of the conditional value of information technology:
information technology must be integrated into decisions in order to determine
its value (Lönnqvist & Pirttimäki, 2006, p. 34).
3.2. Problems of measuring IT benefits
Estimating the value of business intelligence requires answers to at least
two questions:
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What are the costs of implementing business intelligence?
What are the benefits that the implementation of business intelligence
provides?
Costs and their role in assessing the value of business intelligence are
usually not too problematic because, for the most part, they can be financially
evaluated relatively well. The cost of the purchase and ownership of
information technology represents a major factor in deciding on such
investments, but a range of other costs should also be taken into account by the
evaluation. The most important categories of costs that should be considered are
(Remenyi, Bannister & Money, 2007, pp. 62-69):
costs of hardware.
costs of other fixed assets.
costs of software.
costs of data sources and
costs of intellectual capital.
However, it is necessary to take into account some important aspects or
conceptual problems when assessing such costs (Remenyi D., Bannister F., &
Money A., 2007, p. 80):
Determining the total cost of investment: it is necessary to identify all
costs associated with an investment in information technology
(including, e.g. the costs of external services, auxiliary materials, the
corresponding part of the salaries of employees involved in the project,
etc.). This task is not always easy because it is often difficult to
distinguish the costs associated with the investment from those which
are not.
Determining the current costs: the costs of maintenance, upgrades,
repair services, etc., in order to obtain an answer to the question of how
much the system costs in one year.
Determining the boundaries of the system and the project: in theory, the
limits of each project should be clearly defined, but in practice, this is
often not the case. Among other things, for example, various projects
may share the same resources (people, equipment ...), related to
different departments, etc. It may be very difficult to clearly identify the
costs in such cases.
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Preliminary costs: the costs associated with project preparation, data
collection, a feasibility study, etc., namely all the costs incurred before
the decision whether the investment will be realised or not was made.
Opportunity costs: by definition, these costs never appear in traditional
bookkeeping accounts, as they are not actual costs, but rather the costs
of alternatives which have not been pursued (the costs of opportunities
not taken up). Managers often ask how much it would have cost had a
different investment been chosen instead of the actual one. Opportunity
costs are often a tool through which we compare various investment
projects between themselves and, based on that, choose the one with the
lowest cost.
Reduced benefits: for example, those due to a poorly designed system,
errors due to the inadequate training of users, declinatory reactions of
users of the new system, slow system responsiveness, an inability to
work due to system malfunctions, etc.
Cost of risk: risk, for instance, is connected with the decision whether to
opt for a more expensive solution from a renowned provider or for a
cheaper solution from an unknown provider. The latter possibility is
more likely to cause significant unforeseen costs in the future because
of the poor quality, yet one can actually never know for sure. The price
difference can also be interpreted as a premium for insurance against
such risks – the question is simply whether we are willing to bear this
cost.
Measuring the benefits of BI, however, represents an even bigger problem
than measuring the costs. Many effects assumed to be created by BI consist
mainly of non-financial and even intangible benefits such as the improved
quality and timeliness of information. Although such non-financial effects
should lead to financial outcomes (e.g. cost savings), there may be a time lag
between the acquisition of information from BI and the related financial gain.
Therefore, measuring BI benefits can be extremely difficult in practice
(Lönnqvist & Pirttimäki, 2006, p. 34).
Business intelligence often has an influence on the quality of customer
relationship management, customer satisfaction, and the search for new market
opportunities, areas to which we often cannot attribute any specific financial
value. How much is a satisfied customer worth compared with one slightly less
satisfied? Is the increase in sales in a particular market segment the result of
using BI, or would it have happened in any case? Furthermore, how valuable is
the possibility that a general manager can produce a report by himself? Should
we understand this as a saving of his time, or would it perhaps be more
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beneficial for him and for the organisation if the report were prepared by
someone else, leaving the general manager free to deal with ‘more important’
things? Such questions often raise dilemmas when it comes to assessing
estimating investments in BI. Therefore, this remains quite a problematic and
vague field. The benefits of business intelligence, along with information
systems, in general, can be divided into four categories (Carver & Ritacco,
2006, p. 17):
Measurable (quantifiable) benefits are those that can be clearly
measured, for example, reducing the time needed to carry out certain
tasks, savings achieved by purchasing one software solution instead of
another, an increase in revenue and profit, and similar.
Indirectly quantifiable benefits are usually related to customer
satisfaction. Introducing new technology can improve customer service,
which has a positive impact on their satisfaction, resulting e.g. in larger
sales volumes, the increased loyalty of customers returning to purchase
again, the winning of new customers, etc. Customer satisfaction is
typically assessed by surveys, by monitoring the volume of business,
the re-order ratio as well as other, less formal ways (e.g. by visits and
dialogue with customers).
Non-measurable benefits include a higher quality of work, the better
motivation of employees, the effects of IT on an improvement of
communication in the organisation, higher quality knowledge sharing
between employees and so on. The main problem in assessing these
benefits is that they may only be assessed in a subjective way, which
does not provide reliable information about their real value.
Unpredictable benefits can, for example, be new solutions and the ideas
of creative individuals.
Since it is almost unrealistic in practice to expect to obtain accurate
numerical estimates for the return on investment (‘ROI’) in BI, Carver and
Ritacco (2006, p. 17) propose an approach whose advantage is that it takes both
measurable and intangible benefits into account, and consists of the following
steps:
an evaluation of the expected measurable benefits,
a description of intangible benefits in a qualitative way, as precisely as
possible,
making an assessment of the total cost of ownership (‘TCO’), including
the cost of hardware, software, internal resources, external consultants,
maintenance fees and other costs,
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the following decision rule is then applied: (1) if the sum of directly and
indirectly measurable benefits outweighs the total cost of ownership
(‘TCO’), then it is worth making the investment; (2) if the TCO is
higher than the sum of directly and indirectly measurable benefits, it is
necessary to also assess the intangible benefits in order to be able to
make a decision.
Further, Carver & Ritacco (2006, p. 18) state that the users of existing
business intelligence systems often believe that the non-measurable benefits are
worth much more than the measurable benefits, so they must not be ignored in
the evaluation process.
3.3. Theoretical models for evaluating investments in IT
In both the literature and business practice, several models for evaluating
investments can be found. Some are based on a quantitative approach, while
others rely on qualitative evaluations. The latter ones are especially worth
considering when talking about evaluating investments in information
technology and business intelligence.
3.2.1. Financial methods for evaluating an investment
Return on investment (‘ROI’) is a classic method for evaluating an
investment. A problem seen when calculating the ROI on investments in
information technology and business intelligence systems is that the output of
the investment is represented by information obtained from the system, and the
value of this information is very difficult to assess (Solution Matrix Ltd, 2009).
The main reason for this difficulty is that the outcomes of business intelligence
systems investment such as a redefined, innovative or more cost effective
business process, increased level of the automation, faster business process
execution, and market enlargement, are usually long-term and difficult to
delimit from the outcomes from other investments.
The net present value method (‘NPV’) is one of the most commonly used
methods for evaluating investment projects. With this method, the value of
future benefits (future earnings) is discounted to the corresponding present
value. The present value of future benefits is then compared to the cost needed
to achieve these benefits in order to determine whether the benefits outweigh
the costs (Turban, Leidner, McLean & Wetherbe, 2008, p. 564). The net present
value analysis is considered as being effective when the costs and benefits are
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well-known, tangible and measurable, so they can be easily converted into a
monetary value.
The same applies to the calculation of the internal rate of return (‘IRR’),
which is defined as that discount rate at which the present value of the sum of
expected cash inflows is equal to the present value of the sum of expected cash
outflows from the project (Brigham & Gapenski, 1996, p. 218).
Cost-benefit analysis has long been used for evaluating a wide range of
projects. With regard to projects in information technology, it is considered
within the scope of the feasibility study, which has to be done before project
planning, before a detailed analysis of the requirements and before any further
steps are taken in the development of an information system (Turk, 2005, p.
157). A cost-benefit analysis represents the widest aspect of the economic
analysis of an investment and it also involves hard work because there are no
simple recipes for how to do it. In both theory and practice, many variations are
found (e.g. the total cost of ownership method), which sometimes offer a
simpler way to achieve quality decisions (Turk, 2005, p. 157).
If the net benefits of an investment in information technology in practice
were to be evaluated as an absolute value (in terms of the impact on the value of
the entire organisation), much work would be required to carry out the cost-
benefit analysis. When undertaking a cost-benefit analysis of an investment in
information technology, the investment should normally be compared with one
or more competing investments or with the current situation (as if there were no
investment). The analysis should only include those parts of the business on
which the investment will have a noticeable impact (e.g. a change in existing
processes, procedures, the productivity of certain employees or departments,
etc.).
The total cost of ownership (‘TCO’) method is a variation of the mentioned
cost-benefit analysis, but it can be used to identify and calculate all costs related
to an activity or the purchase of equipment (fixed asset, software, etc.) over a
certain time (TCO Special Interest Group, 2009). The TCO not only includes
the purchase costs, but also all other expenses related to the use and
maintenance of equipment within a given time period, which is usually the same
as the lifetime of the asset. This method can be used for the purchase of any
equipment of significant value that needs a thorough analysis of long-term
effects and costs, including those that are hidden at first sight (Total Cost of
Ownership, 2009).
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3.2.2. Case studies
A case study is one of many research possibilities whereby an intensive
and thorough study of a particular case is carried out. Based on systematic data
collection and analysis, we come to certain findings and conclusions which can
significantly clarify the researcher's knowledge of the studied case. On this
basis, future studies can also be adjusted and improved. We could add that these
studies generate and verify hypotheses. A case study is a research strategy that
empirically examines a concrete example in its actual environment. It can
involve a combination of qualitative and quantitative analyses, whereby the
specific procedure depends on the characteristics of each particular case study.
One possible approach to case studies in the information technology field is the
comprehensive methodology for measuring the efficiency of investments in
information technology, described by Rejc Buhovac (2005, pp. 223-229).
The methodology is based on a model with four dimensions: inputs,
processes related to information technology, results of the investment in
information technology, and financial effects of the investment in information
technology. The dimensions represent a cause-and-effect relationship between
the activities and results. The methodology thoroughly examines individual
elements in the model's cause-and-effect chain, offering carefully selected
indicators to monitor these elements. At the same time, it shows through a
number of practical examples how to include all the costs and benefits of an
investment in information technology and calculate the return on investment.
The method intends to measure the effectiveness of investments in
information technology in general, for which it gives a very comprehensive and
systematic approach, but it does not deal specifically with the evaluation of
investments in business intelligence. The requirement of proven financial
effects appears to be particularly problematic with investments in business
intelligence since business intelligence solutions offer companies a wide range
of indirect benefits (such as decision support), which are difficult to financially
evaluate.
3.2.3. Subjective evaluation
The subjective evaluation of effectiveness is an alternative approach based
on observations of users and can fairly accurately show the outcomes of
business intelligence. In practice, evaluators pose questions to the users of
information tools about their effectiveness. These questions may, for example,
relate to how the level of user confidence in decision-making has increased as a
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result of the information obtained from the business intelligence system, or to
the users' satisfaction regarding the availability and timeliness of the related
information. A positive aspect of this approach is that the results show how
effective the business intelligence solutions appear to the users. On the other
hand, this approach does not provide evidence of the financial value of the
effects of an investment in information technology.
3.2.4. Strategic analysis
The main problem of evaluating investments in information technology
usually involves the measurement and financial evaluation of the tangible and
intangible benefits of this technology. Moreover, certain benefits manifest
themselves in the form of discovering new opportunities that companies can
use, but may also not use (Turban et al., 2008, p. 565). A useful approach may,
therefore, be the strategic analysis, in which the following are particularly
assessed (Turban et al., 2008, p. 570):
strategic objectives of the investment in information technology,
support that information technology provides by achieving the
company's strategy,
support to the management,
goals of ensuring competitiveness and
long-term costs and benefits of the information technology.
This type of analysis is chiefly based on a qualitative approach, which can to
some extent replace traditional (financial) methods of evaluating an investment.
4. JUSTIFYING THE INVESTMENT IN OLAP TECHNOLOGY IN
MELAMIN
The following section of the paper presents the evaluation of an investment
in OLAP technology by the Slovenian company Melamin. The investment has
already been implemented and, therefore, there is no need to provide support for
the decision whether or not to carry out the investment, but rather to provide an
assessment of whether the already realised business investment is justified.
4.1. Basic facts about the company, vision and strategy
The Melamin chemical company produces various types of synthetic
resins. It is relatively well-known in the European market as a supplier of resins
for the paper and construction industries, along with impregnated decorative
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papers for the furniture industry. Globally, it is becoming more and more visible
with products for industrial paints and lacquers, and the rubber industry. In
particular, significant progress has been made in recent years in the field of
synthetic resins based on hexamethylol-melamine (HMM), for whose
production the most advanced continuous production technology was recently
introduced. The company has approximately 200 employees and is organised as
a joint-stock company. Melamin holds the quality system certificates ISO
9001:2000 and ISO 14001:2004, and is also a member of the Responsible Care
initiative.
In recent years, except during the ongoing economic crisis, turnover was
constantly rising. With a clearly defined vision and strategy, the company aims
to become one of the leading producers in the niche of modified melamine
resins (Melamin, 2008, p. 1).
Companies operating in today’s chemical business face many challenges.
The chemical industry has become an extremely difficult business area, and the
same is happening with the market. Industrial applications that represent a
market opportunity for Melamin are usually subject to very strict quality control
within companies themselves, while the related legislation is also becoming
ever more demanding.
Chemistry has become an industrial area which many people look at with a
great deal of scepticism; on one hand, because in everyday life we are too often
under the influence of chemical preparations in various forms (such as additives
or ingredients in cosmetic products, medicines, food preservatives and
additives) while, on the other, manufacturers are very well aware of the risks
connected with their business.
No producer can afford to produce and sell a product that is medically or in
any other way questionable. Chemistry is thus a very difficult area, not only in
professional and technical respects but also increasingly in legal and
administrative respects. The chemical industry is also very capital-intensive
since production requires high-tech equipment, complex chemical reactors,
measuring devices and sensors, as well as complex computer systems to
manage and control the manufacturing processes. Melamin is a relatively small
company, yet its competitors are often big multinational companies with more
technical, financial and human resources available to invest in research and
development (‘R&D’) and the modernisation of production.
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The main features that define today’s chemical industry around the world
are:
strong competition (technologically advanced and companies with large
operating capital),
mergers and acquisitions,
vertical integrations,
demanding and time-consuming access to new customers and
chemical and environmental legislation.
According to the experience Melamin acquired during its many years of
business activity in international markets, the following success factors can be
identified:
increasing revenue,
customer loyalty,
cost-effectiveness,
quality and effectiveness of products and
compliance with the law and other (e.g. ecological and safety)
regulations.
Melamin's vision is to become a major producer of modified melamine
resins and impregnated decorative papers in Central Europe. At least 30% of its
revenue should be created by products with high added value (according to
established internal criteria). A high-tech continuous production process for
etherified melamine resins will be implemented (which is largely in place
already). The cost-effective production of large quantities of impregnating
resins and resins for construction will be established in a new modern
production facility. A modern process for the production of powder resins will
be introduced. With at least two product types, the company will rank within the
top three producers in the world and thus become an active player in the market.
In the first stage, this should be realised with binder for rubber and lacquer
components based on HMM. The return on equity will rise to at least 10%, and
Melamin will be ranked among the 100 largest exporters in Slovenia, which
should be achieved in about five years.
Since it is important to know something about the business strategy before
undertaking a strategic analysis of the justification of the investment in business
intelligence, that strategy is thus briefly described below.
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Overall strategy: the company will follow its vision via accelerated
investments in new technologies. The share of investments should be between
6-8% of the annual turnover. Sales activities in new markets will be intensified.
In particular, through products with a higher added value, which represent the
central part of future production (e.g. highly etherified resins based on HMM),
an own brand will be developed. Long-term contracts will be made with
suppliers of the key raw materials. Investments in research and development
will rise to at least 3% of the annual turnover.
Sales and markets: A satisfied customer is a fundamental approach and the
primary objective, which allows the company’s stable and long-term existence
and has an indirect impact on all of its other objectives. The company
anticipates achieving an export share of at least 80%, and 8% average annual
growth of turnover. Activities will take place mainly in the direction of
increasing sales of products with higher added value. Sales will be boosted
especially in fast-growing markets outside the EU. The optimisation of the
product structure in terms of production volumes and profitability will be a
permanent process.
Indicators of effectiveness and efficiency: to successfully exist in the global
market, the company has to achieve and maintain the following indicator values
over the next five years:
Gross value added per employee: EUR 45,000
Sales per employee: EUR 200,000
Return on equity: 10%
Share of investments in total revenue: 8%
Investment in R&D: 3%
Share of exports: 80%
Share of strategic products in the world niche: 5-10%
Quality and ecology: the company will build and maintain the quality
systems ISO 9001 and ISO 14001, while the business process will be improved
to the level required by the criteria of the European business excellence model.
4.2. Implementation of OLAP
Before implementing OLAP technology, the company used an on-line
transaction processing (OLTP) system. Before bringing in the new solution, an
analysis of the existing situation had to be undertaken and certain questions had
to be answered, as described below.
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Expectations the company had about OLAP mainly concerned the faster
and easier acquisition of information for business decisions. The new
information system had to be easy to use so that users would not dislike the new
solution, which could lead to exactly the opposite effect to what was desired.
Users of the OLAP system were especially meant to be upper and middle
management, including directors of business units, purchasing and sales
managers, the sales team and occasionally the employees of financial and
strategy-management departments. The number of potential users was estimated
at 25, also depending on the level of actual usability and benefits of the OLAP
solution in practice. The users’ required skill level was not a very demanding
issue – users would be dealing with the same types of data as in the OLTP
system, but what would be new was the additional functionality of the OLAP
system and its user interface. The appropriate training of future users was
required; first, as a presentation of the planned new solution which was
undertaken by its supplier and later, in the form of internal educational training
organised by the company’s own IT department.
The data that needed to be included in the OLAP system were mainly
defined according to the needs of management and sales. Before creating a
multidimensional database and implementing the OLAP system, together with
the IT department and the supplier of OLAP, its future users defined the core
requirements the system would need to fulfil. The goal was to ensure a
complete view over all data which could serve as a basis for sales analysis and
support decision-making. The OLAP system and its multidimensional database
therefore includes dimensional data about items like business units, business
partners, recipients, products, document types, insurances, commercial team,
financial items, time periods and identification numbers of commercial
documents. The measures are quantity, value (in the original currency), the
value in EUR, bookkeeping values, and prices.
Required hardware and software: the new system required a server suitable
for facilitating a multidimensional database. Such a server was already in place
so no new investment was needed for that. The personal computers of the future
OLAP users, connected to the company's local area network (‘LAN’), were all
relatively new so the installation of OLAP clients was possible without any
hardware upgrades.
Data loss prevention: a database backup system was already in place,
which allowed efficient periodical backups of the relational database of the
existing OLTP system. If a loss of data in the new multidimensional database
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were to occur, it would only need to be rewritten with data from the source
(relational) database, which contains data for the current year (and is also
regularly archived), while data for previous years would need to be extracted
from archive files. Based on an analysis of the existing situation, the software
tool ProClarity Professional was chosen as it enables multidimensional data
analyses with numerous possible views (tables, graphs, decomposition trees,
etc.) and functions concerning data (sort, filter, eliminate, isolate, etc.). Data can
be drilled down into details, which enables one to look for patterns or
connections between different items, and they can also be aggregated (drilled
up) in the opposite direction. These and many other functions represent a
powerful tool for complex analyses, which can often lead to useful information.
4.3. Evaluation of OLAP benefits
The investment in OLAP technology has brought certain benefits to
Melamin. However, are these benefits big and significant enough to say that the
investment was justified? The method of evaluating an investment usually
depends on the purpose and type of the investment (Table 1). Given that one of
the main goals of this investment in business intelligence was to improve the
company's competitive advantages and business success, which is obviously
strategically important for the company, the strategic analysis method was
chosen as being the most suitable for this evaluation. Classic financial analyses
like ROI would be less appropriate here as it would be very difficult, if not
impossible, to financially evaluate all the costs and especially the benefits of the
investment.
Table 1. Purposes and types of investments, and evaluation methods
Purpose of investment Type of investment Evaluation method
Business survival Essential Continuation/
Termination of business
Increase in efficiency Vital Cost-benefit analysis
Increase of effectiveness Critical Business analysis
Competitive advantage Strategic/Reputation Strategic analysis
Infrastructure improvement Architectural/Organisational Long-term impact analysis
Source: Remenyi D., Bannister F., & Money A., 2007, p. 107.
Based on the purpose and type of the investment, strategic analysis was the
method of choice for Melamin's case. Below, the investment will be evaluated
in the sense of a qualitative analysis of the realised benefits, which is also
considered to be an adequate indicator for management of whether the cost of
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the investment in the OLAP technology was justified. The analysis involves two
methods:
a subjective evaluation from the users' side and
a strategic analysis with elements of an analysis of a cause-and-effect
relationship between the activities and results.
4.3.1. Subjective analysis of users' opinions
Within the subjective analysis, we collected the users’ opinions about the
advantages OLAP brings them, what was their satisfaction and experience with
the use of the OLAP technology, whether their expectations were met, and what
benefits or advantages of the system they deem most important for their work.
A summary of the findings is shown in Table 2.
Table 2. Benefits of the OLAP technology according to user experiences
Ease of use
Simpler to use than the OLTP system
Unified access to sales and purchasing data for all three business units
The data warehouse that enables easier access to historical data
Time-saving
Shorter time needed to produce reports
Significantly faster sales and purchases analysis less time needed for analyses more time available for
decisions
Savings in IT
Less support needed from the IT department, which means a reduction of its work tasks and thus greater
availability for the resolution of other problems
Improved decision support
Rich possibilities for different analyses and graphic visualisations of data
Better transparency of analyses because of the numerous possibilities of the graphical visualisation of results
Possibility to export data to Excel
Improved communication for the faster, simpler and more transparent exchange of reports
Negotiations support (the graphical analysis and display of data shows buyers and suppliers that business
with them is seriously monitored, which is a strong argument in defending one’s own standpoint in
negotiations)
Flexibility
Greater flexibility by preparing reports (much more ‘freedom’ for users, the possibility of ad-hoc queries)
Better possibilities of analysing sales by geographical areas, product groups
(analysis of competing buyers) etc.
Possibility of preparing data ‘to go’ (local cubes and briefing books)
Possibility for publishing certain information on the intranet and/or Internet
Quick reactions make positive impressions on business partners
Better business monitoring enables customer-adapted and timely communication with customers, which in
the longer term contributes to growing revenues and improving customer satisfaction
Possibility of aggregating data
Possibility of drilling into data
Increased productivity of the sales team as a result of fast and tailored analyses and consequent focus on
what is important for the organisation
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The users of the OLAP technology in Melamin are mostly representatives
of senior and middle management, directors of business units and sectors, and
sales managers in individual units who need quality and timely information for
decision-making, as well as an effective tool to track sales and events in
different markets. At the time of the study, there were 17 users of OLAP, eight
of whom were regular users, while the others used the system occasionally or as
needed.
4.3.2. Benefits of OLAP technology in connection with the company’s
vision and strategy
One of the main indicators justifying an investment in BI is whether certain
types of benefits of BI contribute to the realisation of the company's business
strategy. The analysis relies on the categorisation of potential benefits (Atre &
Moss, 2003, p. 39) presented in Section 2.3, which are connected to the
realisation of the company's strategic goals. Table 3 briefly describes the role of
OLAP technology for each benefit category, and for each possible way of
achieving these benefits.
Table 3. The role of OLAP technology in achieving different categories of benefits
Ways of increasing turnover The role of OLAP technology
Identification of new markets and
niches
Transparent analyses of sales and identifying markets in which
the company is not yet present. Rich possibilities of graphic
presentations of data, modules for geographical analyses, such
as MapInfo MapX ® plug-in for ProClarity, a crosswise
presentation of data on markets, customers, products etc.
A more efficient sales process
Simple and clear monitoring of sales with analyses of time-
series, customers, markets, members of the sales team etc., as
well as with drilling down into data and discovering the causes
of the present situation.
Faster recognition of new opportunities
Compared to the OLTP system OLAP offers significantly
clearer possibilities of displaying and comparisons of different
data dimensions. A high degree of adaptability of analyses to
suit the needs of users.
Faster adaptation of marketing
activities
More transparent analyses enable the faster discovery of trends
and deviations in sales dynamics, which enables faster reactions
and instantaneous adaptation of sales activities to market
conditions.
Ways of increasing profit The role of OLAP technology
Better focussed advertising messages Faster and better quality analyses, a better view over sales, also
because of the many possibilities of graphically presenting data.
Earlier warnings of a sales drop Time-series analysis, easy monitoring of sales trends according
to different criteria (markets, customers, products etc.).
Identification of less profitable
products and product groups
Drilling down into data enables a fast search and identification
of products that differ from the expectations (e.g. do not sell
well, bring a small profit etc.). The Performance Map tool
enables transparent graphical analyses and comparisons of
different measures like turnover and profit.
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Identification of internal inefficiencies
An analysis of sales based on members of the sales team,
business units etc. can discover internal inefficiencies and
opportunities for improvements.
More efficient management of the
product portfolio
An analysis of the sales and profitability of products enables the
efficient monitoring of product life cycles and the timely
adaptation of the sales assortment.
Ways of improving customer
satisfaction
The role of OLAP technology
Better understanding of customers'
preferences
Easier monitoring of an individual customer's purchases,
possibility to monitor the order dynamics in different time units
(e.g. by years, quarters, months etc.). An analysis of sales by day
of the week, for example, can help to optimise the organisation
of supplies and arrangements with carriers, which can improve
the timeliness of deliveries and hence customer satisfaction etc.
Better harmonisation on the customer-
product level (adapting the product to
the customer's needs)
Drilling down into data and the use of performance charts enable
the identification of various links between different categories of
data. Possibility to discover changes in the structure of sales by
products and markets, and thus adjust marketing approaches to
the phases of the product life cycle.
Increase in the number of regular
(return) customers
Monitoring the dynamics of individual customers’ orders, an
analysis of trends and time series enables the timely detection of
deviations and an immediate response, e.g. visits to a customer
when sales drop (if this is detected on time, it can prevent the
loss of a customer and increase the re-order frequency).
Faster solving of complaints
Fast searches for information on previous deliveries, invoices,
delivery dates etc. In case of complaints regarding the timeliness
of deliveries, e.g. a fast and easy analysis of supply dynamics by
days can be done, which helps detect the causes of deviations
(seller's or carrier's responsibility etc.).
Ways of decreasing costs The role of OLAP technology
Optimising the stock levels
The creation of multidimensional data cubes in the field of stock
control offers the potential for a complex analysis of current
state and stock turning, which enables optimisation and thereby
reduced stock costs.
Reduction of quantity of bad quality
products and products with an expired
shelf life
A comparison of average stock levels with information about
production and sales levels by product enables a better
production-demand adjustment, and fewer products of improper
quality and an expired shelf life.
Reduction of time needed for business
analyses and reports
OLAP technology enables the quick and simple execution of
complex analyses. Therefore, users have more time available for
other, more productive tasks.
Fewer requests to the IT department for
tailor-made analyses and reports
The high level of flexibility of ProClarity enables users to create
queries and reports by themselves. This means faster access to
information and time-saving for OLAP users as well as for IT
specialists, who can dedicate more time to other, more
productive tasks.
Ways of increasing the market share The role of OLAP technology
Increase in the number of new
customers
Improvement of customer satisfaction, which is one of the
benefits of OLAP, also has a positive influence on the
acquisition of new customers.
Higher degree of customer loyalty
compared to ‘before’ and to the
competition
Efficient possibilities of historical data analyses (sales dynamics,
customer orders etc.) enable the early detection of deviations
from trends, and fast responses.
More transparent market monitoring
and detection of new market niches
Thank to the numerous transparent graphical display modes, the
detection of new market niches is much easier than with the
tabular presentation of data in ‘traditional’ reports.
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Given that the mentioned benefits of OLAP technology are provided in a
descriptive form and not in measurable form (by quantified values), it is
important to ask, in the context of justifying investments in this technology,
whether and how these benefits help achieve the fundamental long-term
strategic goals. First, the criteria to help us make a final evaluation of the
justification of the investments in business intelligence must be defined. Such
questions are:
What are our main strategic objectives?
In which way will we try to achieve them?
How to use business intelligence to contribute to achieving the long-
term strategic objectives?
Figure 2 (see below) shows the cause-and-effect relationship between the
properties of the OLAP technology and the benefits it brings to the company. In
addition, it shows the relationship between the OLAP benefits and the
achievement of the company’s strategic objectives. The arrow links show that
the individual characteristics of OLAP can generate multiple benefits for the
user, and that some benefits may result from several different properties of
OLAP. For example, we see that the faster analyses enabled by OLAP bring
benefits to the company, reflected in five areas:
an increase in profit due to better support for decision-making and due
to time-saving,
an improvement of customer satisfaction as a consequence of the faster
response times to their requests and expectations,
a cost reduction due to time saving and reduced work tasks of the IT
department involving the creation of reports that the OLAP users can
now prepare by themselves,
an expansion of market share due to the possibility of the transparent
monitoring of sales volumes, structures and trends, as well as the easier
detection of areas with poor sales, deviations from past trends and
similar,
faster decision-making, which may be critical to the survival of the
company in a strong competitive environment.
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B. Hočevar, J. Jaklič: Assessing benefits of business intelligence systems – A case study
Higher level of users' independence
in the
creation of reports
Properties/functions of OLAP
Increase in profit
Benefits for the company
Fewer work tasks o
f
the IT
department with reports and
analyses
Fast multidimensional data
analyses
Easy and intuitive
user interface
N
umerous analytical functions:
drill
down, time-series analysis,
decomposition trees
Faster analyses for
decision
support
Improved customer satisfaction
Cost savings
Improved satisfaction and
motivation of users
Faster decision-
making
Intensified focussing of sales
activities on sales markets
Improving customer satisfaction
Accelerated investments in new
technologies
Increase of the share of products
with higher added value
Min. 80 % of export, and min. 7 %
increase of turnover yearly
Adaptation of the structure of the
p
roducts to the market and searc
h
for new market opportunities
Reaching the target values o
f
efficiency indicators
Strategy
Increase in sales
Increase in market share
Figure 2. Cause-and-effect relationship between the OLAP properties, benefits for the
company, and its strategic objectives
As also shown in Figure 2 (see above), the benefits from using the OLAP
technology also help in achieving the company’s strategic orientation. Within
the qualitative analysis of the justification of the investment in business
intelligence, it is important that the existence of such a cause-and-effect
relationship in fact confirms the correctness of the decision made by the
company’s senior management to implement the OLAP technology. Moreover,
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B. Hočevar, J. Jaklič: Assessing benefits of business intelligence systems – A case study
in this case study, a two-way relationship between business intelligence and
corporate strategy has been confirmed:
business intelligence, with the properties and benefits it offers users,
helps achieve the strategic objectives of the company; and
at the same time, another long-term (strategic) objective of the company
is accelerated investments in new technologies (including information
technology and business intelligence) in the future.
This two-way relationship, in fact, also suggests the concept of continuous
improvement, which is one of the primary orientations of the ISO 9001 quality
management system.
5. CONCLUSIONS
The benefits of business intelligence are often greater than what appears at
first sight. In addition to measurable and indirectly measurable benefits, it also
brings certain benefits that are difficult to measure or are even unmeasurable, as
well as some unpredictable benefits that are only revealed after a certain period
of using business intelligence. One of the key purposes of business intelligence
is to improve support for business decisions. Investments in IT should be
aligned with the strategic objectives of the organisation. On one hand, this
means that investments in modern and efficient information technology should
be an integral part of the company's strategy and, on the other hand, the
information technology should help the company to achieve its strategic
objectives. Managers in conjunction with IT departments and users should try to
ensure that this is indeed the case.
Investments in business intelligence and information technology in general
are, of course, associated with certain, usually non-negligible costs. Evaluating
the cost of an investment in business intelligence may at first glance seem easier
than the task of evaluating the benefits, although here too we encounter many
difficulties and challenges. It is often difficult or even impossible to determine
where the boundaries of the project are and what costs should be included in the
analysis. Questions are raised, for example, like how to evaluate the cost of data
sources and intellectual capital, how to evaluate the time savings as a result of
the more efficient technology, whether to take opportunity costs into account or
not, and so on.
In this case study, it was determined that the implementation of OLAP
technology offers users in the company Melamin some advantages compared to
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B. Hočevar, J. Jaklič: Assessing benefits of business intelligence systems – A case study
a transactional system. The benefits can be primarily identified in the form of
the increased autonomy and flexibility of users, when it comes to creating
reports, quick and simple analyses, improved decision support and operational
efficiency, as well as a range of new analytical functions (drilling in the data,
analysis of time series and trends, aggregation, sorting and separation of data,
etc.). Another result of the increased autonomy and flexibility of users is that
the IT experts are less occupied with the creation of reports and analyses, so
they have more time to devote to other tasks and projects. The performance
criterion is thus satisfied since the selected OLAP tool enables users to perform
all the necessary analyses and queries by themselves in less time than with the
previous tools and methods. In addition, new opportunities arise from the use of
OLAP technology in other business fields (finance, service and maintenance,
manufacturing, human resources, possibility of connecting with the CRM
system, etc.).
We also found that the main categories of business intelligence benefits
(increase in revenue, increase in profit, improved customer satisfaction,
reduction of costs, increased market share, improved satisfaction and motivation
of users, and faster decision-making) can be successfully linked to the defined
long-term business strategy. The investment therefore helps the company
achieve its strategic objectives which is, according to Carver and Ritacco (2006,
p. 19), one of the crucial criteria for deciding whether the investment in
business intelligence is justified or not. Users of the business intelligence
solution detected certain very specific benefits which may be summarised as:
ease of use, time-saving, improved decision support, flexibility, and positive
reactions of customers due to faster responses. There was no particular
reluctance to use the new tool as the users were mostly very satisfied with its
ease of use and intuitive user interface. This also means that the criteria
regarding the complexity of use, user's education and training, and the time
needed for executing individual tasks are fulfilled. Regarding the costs, this case
is an example of the favourable realisation of an OLAP solution since it was
implemented completely within the planned annual budget dedicated to IT.
Therefore, we conclude that the investment in the business intelligence and
OLAP technology described in this paper practically entirely fulfilled the
expectations and was thus completely justified.
This case study shows that qualitative methods such as a strategic analysis
and an analysis of users' subjective assessments are appropriate for evaluating
investments in business intelligence.
REFERENCES
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1. Atre S., Moss L. T. (2003). Business Intelligence Roadmap. The Complete
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Intelligence. A Framework for Measuring the Benefits of Business
Intelligence. Business Objects.
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of Information in Knowledge-Intensive Products and Processes (2nd ed.):
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PROCJENA KORISTI SUSTAVA POSLOVNE INTELIGENCIJE:
STUDIJA SLUČAJA
Sažetak
Nekoliko argumenata iz literature o poslovnoj inteligenciji ukazuje na višestruke koristi
od sustava poslovne inteligencije: primjerice, u njih se ubrajaju brži i jednostavniji
pristup informacijama, uštede u području informacijske tehnologije (IT) i veće
zadovoljstvo kupaca, pa sve do povećane konkurentnosti poduzeća. S druge strane,
većinu je koristi od poslovne inteligencije vrlo teško mjeriti, s obzirom na njihove
indirektne i odgođene efekte u poslovnom uspjehu. Dodatna poteškoća u opravdavanju
investicija u informacijsku tehnologiju, a posebno u poslovnu inteligenciju, vezana je uz
činjenicu da menadžeri, u načelu, žele znati isplati li se investicija, tj. je li ekonomski
isplativa. U pokušaju odgovora na ovo pitanje, koriste se različite metode za procjenu
investicija, kao što su klasične metode povrata na investirano, analize koristi i troškova,
neto sadašnje vrijednosti, interne stope rentabilnosti, itd. Međutim, u poslovnoj je praksi
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B. Hočevar, J. Jaklič: Assessing benefits of business intelligence systems – A case study
119
isključiva uporaba navedenih metoda nepogodna, nedovoljna ili nemoguća za procjenu
investicije u sustave poslovne inteligencije. Stoga se za ovu svrhu koriste pogodnije
metode, zasnovane uglavnom na kvalitativnom pristupu, a u koje se ubrajaju studije
slučaja, empirijske analize, analize zadovoljstva korisnika i druge metode koje se mogu
neovisno koristiti i koje mogu pomoći u dobivanju ukupne slike, kada se u obzir uzmu i
klasične, prethodno opisane metode. S obzirom da ne postoji univerzalni pristup
procjeni investicije u informacijsku tehnologiju i poslovnu inteligenciju, potrebno je
svakom slučaju pristupiti na drugačiji način, uzimajući u obzir posebne okolnosti i
svrhu evaluacije. U ovom se radu opisuje studija slučaja u kojoj je provedena evaluacija
investicije u tehnologiju On-Line Analytical Processing – OLAP, u poduzeću Melamin.
Pritom se koristi analiza mišljenja korisnika, praćena strateškom analizom, zasnovanom
na utvrđivanju povezanosti između koristi od tehnologije OLAP i strateških ciljeva
poduzeća.
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