AUTOMATIC INFORMATION PROCESSING AND
UNDERSTANDING IN COGNITIVE BUSINESS SYSTEMS
Ryszard Tadeusiewicz, Marek R. Ogiela
AGH University of Science and Technology, Institute of Automatics, 30 Mickiewicza Ave. 30-059 Krakow, Poland
Lidia Ogiela
AGH University of Science and Technology, Faculty of Management, 30 Mickiewicza Ave. 30-059 Krakow, Poland
Keywords: Automatic understanding systems (AUS), Data analysis, Understanding-based information systems,
Cognitive business systems, Cognitive analysis.
Abstract: The concept of new generation in area of information systems is automatic understanding systems (AUS) to
the attention of the computer sciences community as a new possibility for the systems analysis and design.
The novelty of this new idea is in the previously used method of automatic understanding in the area of
medical image analysis, classification and interpretation, to a more general and needed area of systems
analysis. The concept of the AUS systems approach is, in essence, different from other approaches such as,
for example, those based on neural networks, pattern analysis, image interpretation or machine learning.
AUS enables the determination of the meaning of analysed data, both numeric and descriptive. Cognitive
methods, on which the AUS concept and construct are based, have roots in the psychological and
neurophysiological processes of understanding and describing analysed data as they take place in the human
brain.
1 INTRODUCTION
There are more and more intelligent information
systems being developed. Such systems, which was
evaluated as helpful in years of prosperity, are
indispensable in crisis time. Economical
competition, always very hard, become fierce in
contemporary situation. Therefore new methods of
IT-based management improvement tools are today
necessary more than whenever. The development
time of new information systems – decision support
systems is expected to become shorter and shorter
despite a growing complexity. Everybody looks for
new ideas, because only original methods of
successful management can to bear fruit in
competition superiority. Information systems
designed and developed for the future must have
new features and new roles. The are no more only
useful calculator, helping in routine management
procedures. The information system of the future
must be a weapon, revolutionising the way we
conduct business nowadays. Such revolutionary idea
of the use automatic understanding systems in
business practice is presented in this paper. This idea
is not mature enough to be introduced to the
economical practice nowadays, but it is different
from typically used decision support paradigms and
therefore can be found interesting.
Modern production, service, trading companies,
banks, insurance corporations, and the dispatch
industry, rely on information systems, which are
highly integrated in an organisation. However, they
do not take significant advantage of the most recent
advancements in artificial intelligence and cognitive
science. This is regretful, since the use of AI and
cognitive science could contribute significantly to IT
innovations and may constitute a source of
competitive advantage.
2 COGNITIVE ANALYSIS BASIC
METHODS AND IDEAS
More ambitious tasks, such as a strategic idea
generation, require a new approach. An AUS is a
natural way to go.
5
Tadeusiewicz R., Ogiela M. and Ogiela L. (2009).
AUTOMATIC INFORMATION PROCESSING AND UNDERSTANDING IN COGNITIVE BUSINESS SYSTEMS.
In Proceedings of the 11th International Conference on Enterprise Information Systems - Artificial Intelligence and Decision Support Systems, pages
5-10
DOI: 10.5220/0001844200050010
Copyright
c
SciTePress
However, it is worth noting that we are aiming to
develop an IS capable of using both the form and the
content of business data stored and retrieved for
analysis. To manage a business efficiently and, in
particular, to find and implement new concepts, it is
necessary to understand the situation of the
business as well as that of the business environment
(or of a given market segment). By understanding
the micro- and macroeconomic situation well, one
can have the basis to propose innovative changes,
which may even turn out to be revolutionary in
nature. However, the lack of understanding of
certain signals and/or data could lead to disaster.
From the viewpoint of psychological sciences, in
the process of understanding any information
obtained by a man, subject to cognitive analysis,
there are three stages:
Registration, remembering and coding the
information obtained.
Preserving – a latent stage of natural processes.
Information reproduction – its scope covers the
remembering, recognition, understanding and
the learning of some skills anew (Ogiela,
Tadeusiewicz, 2003; Tadeusiewicz, Ogiela,
2004).
Some features of cognitive processes on which
we shall base our AUS information model, the
model analysed in this paper, can be associated with
the neural network technique, which is quite
fashionable nowadays. These networks are capable
of registering, remembering, storing and reproducing
various signals and other information. Nevertheless
the capacity of neural networks is limited by the fact
that in order to build them one uses rather small sets
of units - learning by processing information
(artificial neurons). As a result, within their scope lie
only very simplified models of psychological
processes - at best connected with the ability to learn
simple reflexes or elementary associations. The
neurophysiological model of cognitive analysis that
we need in this paper is based on the functioning and
operation of large brain fragments that can be
described by examining (among others) large neural
group dynamics attractors (amounting even to
millions of neurons), defined in the stimulation area
of these neurons (Tadeusiewicz, Ogiela, 2005).
Even though there are no identical states of brain
surface (for example examined with EEG), in the
dynamics of its activities one can find constant
relations between these attractors, i.e. relatively
repetitive dynamic neurophysiological states.
Appropriately, mathematically interpreted dynamic
states of the brain are characterised by some deeper
relations, which could have their logical
representation. The correspondence between the
state of mind and brain does not refer to the
electrophysiological surface phenomena of a volatile
nature, but it points to some stability of attractor
states.
Let us now try to shift these statements to a
cognitive IS model, of interest for us and used for
business purposes. Its task would be to interpret
facts based on the understanding and reasoning
conducted in connection with the semantic content
of processed data.
3 SEMANTIC ANALYSIS OF THE
DATA
Every Information System is supposed to perform a
semantic (directed at the meaning) analysis of
a selected object, or the basis of the information
must contain some knowledge necessary to make
a correct meaning analysis. Confronting the obtained
description of a currently analysed object (e.g. a
specified market situation), we obtain the premise to
show the real meaning and sense of the said object,
that is to understand it via its featured
characteristics along with its given set of
expectations and hypotheses. This is true for every
system capable of understanding any data and
information. This is due to the fact, that it is always
the knowledge held previously, i.e. the basis to
generate system expectations, that can constitute the
reference point for semantic analysis of features
obtained as a result of the conducted analysis of
every object, analysed at the system input. As a
result of the analysed objects combined features
together with the expectations generated, based on
the knowledge regarding its semantic content, we
find a cognitive resonance phenomenon (figure 1).
That is the key to meaning analysis of objects or
information.
Figure 1: The cognitive resonance phenomenon in the
process of the analysed object understanding.
ICEIS 2009 - International Conference on Enterprise Information Systems
6
4 NEW OBJECT
REPRESENTATION
In accordance with the concept developed by the
authors over a number of years, cognitive analysis
used in IS dedicated to automatic understanding, is
based on the syntactic approach. For the purposes of
meaning analysis and interpretation of the analysed
object it therefore uses a linguistic description
(Meystel, Albus, 2002; Tadeusiewicz, Ogiela, 2004).
As a result of the implementation of the pre-
processing stages described above as well as with
reference to mathematical linguistics, it is possible
to obtain a new object representation in the form of
hierarchic semantic tree structures and the
subsequent steps deriving this representation from
the start symbol of the grammar used. An intelligent,
cognitive IS, at the stage of pre-processing, must in
most cases decompose the analysed data to a lower
level of instance, identify primitive components and
determine the relationships between them. An
appropriate classification makes it possible to find
out whether the representation of a given object
belongs to a class of objects generated by a formal
language defined by a possible grammar defining
formal languages (i.e. sequential, tree or graph
languages). A recognition with their use takes place
in the course of syntactic and semantic analysis
performed by the system.
Further system operations relate to techniques
originating from mathematical linguistics. The
details of its use can be found in next chapters.
Nevertheless due to the fact that we are referring to
it for the first time here, it is worth explaining why
we decided to use this very tool in our papers. Well,
the basic difference one can see between automatic
data classification, frequently used in information
science, and the automatic understanding of the data
is that in the case of classification one knows in
advance a certain finite number of classes. The
recognition process is only supposed to determine to
which class one can include the object analysed at a
given time. On the other hand, if one tries to
understand the meaning of a specified object, we
have no “a priori” known list of possible meanings
to choose from. The sense of each data set must be
built though from scratch. One can say therefore that
the number of possible meanings detected in the
automatic understanding process is potentially
infinite; this is even true in one given situation when
we are dealing only with one determined meaning.
For this reason we need such an IT tool that would
be capable of generating an infinite number of
analysed object descriptors. Due to the
implementation possibility the tool itself must be
composed of a finite number of elements. Language
is such a tool. A natural language enables one to
express an infinite variety of moods and content
using a finite number of words. On the other hand,
artificial languages, for example algorithmic ones,
enable, in a similar way, the creation of an infinite
number of various software items. In our paper we
refer therefore to a formalised term of data
description language and to mathematical methods
and to the rules governing the processing of it. This
is to create the basis for the automatic generation of
(potentially) an infinite number of various meanings
using just a small set of elements, formal rules
(enabling computer application) and axioms; these
would form the grounds for an automatic
understanding system (Skomorowski, 2000).
5 AUS-TYPE INFORMATION
SYSTEM: A WHOLE CONCEPT
Figure 2: Division of functions between people and
computers in a traditional IS supporting business decision-
making.
We shall now present a proposed structure and
operational methods for the previously introduced
AUS-type system. First, in order to systematise our
considerations and to establish a reference point, let
us recall the traditional (nowadays applied in
practice) structure of an information system
application: computers are, obviously, involved
since they are the ones that store and process data as
well as analyse data in various ways. Information
obtained from such computer systems is entirely
sufficient for an effective management of business
processes at the tactical level (as marked jokingly on
AUTOMATIC INFORMATION PROCESSING AND UNDERSTANDING IN COGNITIVE BUSINESS SYSTEMS
7
Figure 3: General AUS-type information system structure.
figure 2). On the other hand, if we talk about
management at a strategic level, we find out that
despite automated data collection, storage and
analysis, the task of business meaning understanding
of the said data is in traditional systems the unique
area of people (experts). So is taking and
implementation of strategic decisions: this belongs
only to people holding appropriate, high positions.
The structure of such traditional IS, as presented on
Figure 2, will be the starting point in proposing a
general structure of an AUS-type information
system.
In such a system, whose structure is presented in
figure 3, the initial processes of storing and pre-
processing phenomena taking place in the analysed
business entity, are analogous to the one we are
dealing with in traditional systems. The only
difference is that with the perspective of automatic
interpretation of data analysis process results, one
can compute and collect a larger number of ratios
and parameters since the interpreting automaton will
not be dazzled or perplexed by an excess of
information. This is what happens when people,
interpreting situations, are ‘bombed’ with hundreds
of ratios among which they can hardly find the
important ones and then need to make a huge effort
in order to interpret them correctly. There may also
be no change to the business process management at
the tactical level. This was left out of figure 3
entirely since the AUS information systems concept
does not refer to this level at all.
The difference between a traditional system and
the AUS becomes visible when the computer
independently, and without human participation,
attempts to describe the properties and consequences
of the ratios computed. The results of automatic
interpretation are expressed in the categories of the
applied description language for the interpreted data
properties. The above-mentioned language is a key
element at this stage. It must be designed with great
know-how. Its construction must therefore be based
on collecting and systematising expert knowledge.
Referring to the analogy with medical image
automatic understanding systems, which were earlier
said to be the area of some fully successful
implementations of ideas described here, one could
say that just like in medical systems (Ogiela,
Tadeusiewicz, 2003) the basis for the development
of the language subsequently used for semantic
image interpretation (and diagnosing a disease) were
some specified changes in the shape of the analysed
organs. In the AUS-type information systems the
basic constructing units of the developed language
should be changes of some specified business
indicators.
6 APPLICATION OF
MATHEMATICAL
LINGUISTIC APPROACH AS A
KEY POINT OF NEW IDEA
Of course, focusing attention on a business index
and ratio changes computed in the input part of the
analysed AUS-type information system, as only on
those elements, which should be the basic
components of an artificial language, is just the first
step. The listing and appropriate categorisation of
ICEIS 2009 - International Conference on Enterprise Information Systems
8
changes that should be registered in linguistic
business processes corresponded only to the stage at
which one defines the alphabet to be later used to
build words and sentences, i.e. the language main
object. In order to make it possible to create from the
elements of this alphabet counterparts of words and
sentences for subsequent use by the AUS to describe
the states of business process, which require
understanding and interpretation, calls for an
introduction of additional mechanisms. These
mechanisms would enable combining the above-
mentioned sentences into larger units. Therefore, at a
level superior to the above-described alphabet one
must build the entire grammar rules and
transformations. This grammar can then be used to
create complete languages of description expressing
important content, necessary to understand
automatically the analysed processes.
In medical image understanding systems we
constantly refer to, at our disposal were tools
detecting local changes in the shape of some
specified internal organs and their morphologic
structures (Tadeusiewicz, Ogiela, 2004). These were
the above-mentioned ABC-base. To understand the
state of a given organ correctly, one needed to add to
these graphic primitives their mutual spatial
relations and combine them with anatomy elements.
Owing to a definition of rules and the grammar
constructs connected with them, one could combine
for example a graphic category ‘change of edge line
direction of a specified contour’ with a meaning
category ‘artery stenosis anticipating a heart failure.’
Similarly, by building into the proposed
language grammar the ability to associate business
changes detected in various parts of the managed
company and its environment as well as the
possibility to trace and interpret time sequences of
these changes and their correlations, it will be
possible, for example, to understand what are the
real reasons behind poorer sales of goods or services
offered. As a result it will be, for example, possible
to find out about the fact that this is due to the wrong
human resources policy rather than the wrong
remuneration (bonus) system.
After the development of an appropriate
language which will (automatically!) express
semantically oriented descriptions of phenomena
and business processes detected in the business unit
(e.g. a company) as supervised by the information
system, a further AUS information system operation
will be very similar to the structure in which
function the medical systems previously built by this
system authors. The starting point for the business
data automatic interpretation process, the process
finishing with understanding their business meaning,
is the description of the current state proposed in the
system. It is expressed as a sentence in this artificial
language, built specially for this purpose. Without
going into details (described, among others, in
earlier publications listed in the bibliography) one
can say that the above-mentioned language
description for a human being is completely illegible
and utterly useless. A typical form of such notation
is composed of a chain of automatically generated
terminal symbols. Their meaning is well based in the
mathematically expressed grammar of the language
used. Yet from the human point of view this notation
is completely illegible.
7 CONCLUSIONS
This paper presented the problem of divergence of
IS to accommodate needs imposed by current
changes to business. The disparity between the
needs and real capacity of IS can be observed by
analysing the computer management support
association with a need for making strategic
decisions. To make this term clear let us specify that
in this paper, we understand that all decisions taken
at various levels of company management can be
perceived as strategic if they are not limited to a
simple regulation of stable business processes but
which induce and impose changes. Therefore,
strategic decision making cannot be made solely on
the basis of information about the current state of
affairs in the on-going business processes. Their
essence can change the state of affairs. For this
reason, current IS, focused mainly on registration
and settlement functions are insufficient to support
such decision-making processes.
The analysed steering functions, as has been
realised, are decisions that go far beyond simple
tactic management, and are executed by issuing
detailed commands and giving simple tasks whose
execution can be assessed based on a small number
of well-defined parameters. There are a number of
Information Systems that support tactic decisions
but for a real support of strategic decisions there are
practically no acceptable methods. At the same time,
the growing complexity of modern business
processes, taking place in the conditions of global
economy, results in that more and more people have
to make such difficult decisions. Many of the
decision makers are not ready prepared for this
situation, neither professionally nor mentally.
It makes sense to support their work with IS of
the proposed AUS-type information system. The
AUTOMATIC INFORMATION PROCESSING AND UNDERSTANDING IN COGNITIVE BUSINESS SYSTEMS
9
system would be equipped with previously
unavailable methods to process of the data semantics
for supporting the management in the strategic
decision making.
We have outline the concept structure that could
be the basis for such an AUS-type system dedicated
to the automatic business data understanding. We
have tried to demonstrate briefly that a will to build
such a system is an objective worth aiming at.
In the most competitive global market, the
economy cannot be treated as a “zero-sum” game in
which the success of some businesses must
necessarily be based on (or depends on) the failure
of others.
The economy is not a zero-sum game, which
suggests that the success of one particular business
does not infer the automatic failure of another
business. Quite the contrary, the whole global
economy is more and more oriented towards looking
for solutions that can be referred to as “win-win
solutions”, i.e. solutions resulting in success for all
participants, although each of them may be active in
different fields that have been achieved via different
scopes. For such an economy, implementing the
innovation based on the AUS concept and on
cognitive premises and methods, this should be
interpreted not as a source of threat but rather as
another factor for global growth and development.
ACKNOWLEDGEMENTS
This work has been supported by the AGH
University of Science and Technology under Grant
No. 10.10.120.783
REFERENCES
Meystel, A.M., Albus, J.S., 2002. Intelligent Systems –
Architecture, Design, and Control. A Wiley-
Interscience Publication John Wiley & Sons Inc.
Ogiela, L., Tadeusiewicz, R., Ogiela M.R., 2008.
Cognitive Categorizing in UBIAS Intelligent Medical
Information Systems, in Sordo M., Vaidya S., Jain
L.C. (eds.): Advanced Computational Intelligence
Paradigms in Healthcare 3, Studies in Computational
Intelligence 107, Springer-Verlag, Berlin, Heidelberg,
2008, pp. 75-94.
Ogiela, L., Tadeusiewicz, R., Ogiela, M.R., 2007.
Cognitive Categorization in Modeling Decision and
Pattern Understanding. In: Torra V., Narukawa Y.,
Yoshida Y.: Modeling Decisions for Artificial
Intelligence, MDAI 2007 CD-ROM Proceedings,
ISBN 978-84-00-08539-1, pp. 69-75.
Ogiela, M.R., Tadeusiewicz, R., 2003. Artificial
Intelligence Structural Imaging Techniques in Visual
Pattern Analysis and Medical Data Understanding.
Pattern Recognition (pp.2441-2452). Elsevier vol.
36/10.
Skomorowski, M., 2000. A Syntactic-statistical approach
to recognition of distorted patterns. UJ. Kraków.
Tadeusiewicz, R., Ogiela L., Ogiela M.R., The automatic
understanding approach to systems analysis and
design, Elsevier, International Journal of Information
Management 28 (2008) pp. 38-48.
Tadeusiewicz, R., Ogiela, L., 2008. Selected Cognitive
Categorization Systems, Chapter in book: Rutkowski
L. et al. (Eds.): Artificial Intelligence and Soft
Computing, ICAISC 2008, Lecture Notes on Artificial
Intelligence, vol. 5097, Springer-Verlag Berlin
Heidelberg, pp. 1127–1136.
Tadeusiewicz, R., Ogiela, L., 2008. Modern Methods for
the Cognitive Analysis of Economic Data and Text
Documents and Their Applications in Enterprise
Management. In: Snasel V., Abraham A., Saeed K.,
Pokorny J. (eds.) Proceedings 7th International
Conference on Computer Information Systems and
Industrial Management Applications CISIM 2008,
IEEE Computer Society, IEEE, Los Alamitos,
California, pp. 11 – 23.
Tadeusiewicz, R., Ogiela, M.R., 2004. Medical Image
Understanding Technology. Springer-Verlag Berling
Heildelberg.
Tadeusiewicz, R., Ogiela, M.R., 2005. Intelligent
Recognition in Medical Pattern Understanding and
Cognitive Analysis. Chapter in book Muhammad
Sarfraz (Eds.). Computer-Aided Intelligent
Recognition Techniques and Applications. (pp. 257-
274). John Wiley & Sons Ltd.
Zadeh L.A., 2008. Toward human level machine
intelligence--Is it achievable? Proc. 7th International
Conference on Cognitive Informatics (ICCI’08), IEEE
CS Press, Stanford University, CA.
Zhong N., Raś Z.W., Tsumoto S., Suzuki E. (eds.), 2003.
Foundations of Intelligent Systems, 14th International
Symposium, ISMIS 2003, Maebashi City, Japan.
ICEIS 2009 - International Conference on Enterprise Information Systems
10