decision attribute can be determined with its use, to
decide which attribute is used to mark the value of
decision attribute for the process of new project
proposal evaluation.
4 CONCLUSION
Synthesising the presented results of research the
author presents a hypothesis about possibilities and
advisability of using the rough set theory in the
process of structural funds projects evaluation. The
main advantages of methods assisting evaluation,
based on rough set theory– in relation to traditional
statistical analyses – are first of all the features as
below.
Rough set theory is an instrument serving for
recording of experienced persons and experts
experiences in the form of decision rules based on
empirical materials as well as ensuring processing of
information relatively easy.
There occurs a relatively high certainty, that no
essential dependence between conditional attributes
affecting decision attribute (so-called decision rule)
will be omitted. However, at using traditional
methods of statistical analysis even very essential
dependencies occurring between attributes can be
omitted. Since there is a lack of instruments enabling
defining of such dependence. As an example,
multifactor analysis of correlation makes possible
qualification of numerical value of influence for
individual attributes between themselves only. It
does not create however, any possibility of defining
connections between values of individual attributes.
Methods based on applying the rough set theory
are using experts’ experience and they make
possible verification of their opinions as well as they
are assuring relative easiness in interpretation of
results. Thus the conclusions related to studied
decision attribute are received. It is also easy to
interpret their alternatively incorrect acting.
Dependences established thanks to use of rough
set theory can be ranked in accordance with the
degree of their importance. From additional
description (based on empirical materials e.g.
experts’ opinions) an opinion of significance of
decision rule as well as influence of definite
attributes onto decision results can be made. There
also exists large degree of possibility for verification
of results, because every generated rule is
accompanied with description including reference to
empirical sources.
Redundancy of attribute is easy to prove with the
use of division of decision table into elementary
concepts. The results achieved can be authenticated
by analysing a discernibility matrix.
Rough set theory makes possible carrying out
analyses for different sets of conditional attributes.
The discussed theory is well usable to investigation
of low structured processes (especially socio-
economic ones). It makes possible identification of
decision rules, difficult to intuitive defining.
There exists relative easiness of modification in
reference to decision table (by addition of new, not
considered earlier conditional attributes). This
makes possible creating different decision rules.
The SIMiK system (The Information System for
Financial Monitoring and Controlling of the
Structural Funds and the Cohesion Fund) - for
details see (www.mf.gov.pl;
www1.ukie.gov.pl/www/en.nsf) - recommended by
Ministry of Finance in Poland, is intended to
improve process of EU funds absorption. For
potential project providers the application generator
is the most important element of the system. It
serves to put in all the necessary data. The
evaluation system referred to project proposals
should in future be operated not only with SIMiK
but also with the other systems considered as the
source of knowledge and information. The
evaluation system provided with rules-base
knowledge base, described in the present paper, can
serve as one of the co-operating systems.
Preliminary research works referred to application of
classification algorithm also proved to be very
promising.
REFERENCES
Aamodt, A., 1994. Explanation-Driven Case-Based
Reasoning. In S. Wess, K. Althoff, M. Richter (eds.)
Topics in case-based reasoning. Springer-Verlag.
Bazan, J. G., Hung Son Nguyen, Sinh Hoa Nguyen,
Synak, P., Wroblewski, J., 2000. Rough Set
Algorithms in Classification Problem. In L.
Polkowski, S. Tsumoto, T. Y. Lin (eds.) Rough Set
Methods and Applications. New Developments in
Knowledge Discovery in Information Systems.
Physica-Verlag, Heidelberg.
Cao, G., Shiu, S., Wang, X. 2001. A Fuzzy-Rough
Approach for Case Base Maintenance. In D.W. Aha, I.
Watson (eds.) Case-Based Reasoning Research and
Development. 4th International Conference on Case-
Based Reasoning, ICCBR 2001. Vancouver, BC,
Canada. July 30 - August 2, Proceedings. Lecture
Notes in Computer Science. Springer-Verlag,
Heidelberg.
ICEIS 2006 - ARTIFICIAL INTELLIGENCE AND DECISION SUPPORT SYSTEMS
206