freely on the process definition level. The aim will be
to allow it to users. The second improvement area re-
lates to the way of processing data. Parts of analytic
process definitions might be transferable to database
servers that would be able to perform some actions
on data without necessity of immediate transfer to
the central server. An attention can be also paid to
improvements of the knowledge base to increase its
querying capabilities.
The system will be also thoroughly evaluated in
terms of performance and compared to selected data
mining systems. At this moment, preliminary tests
indicate that presented approaches are correct. For
instance, they have showed the system is capable of
obtaining data mining results in shorter time than Mi-
crosoft SQL Server 2008 R2 Analysis Services. Other
tests will be focused on capability to cope with fail-
ures of processes and algorithms that might cause a
system crash or affect the system availability.
ACKNOWLEDGEMENTS
This work has been supported by the research pro-
gramme TA
ˇ
CR TA01010858, BUT FIT grant FIT-
S-11-2, by the research plan MSM 0021630528
and the European Regional Development Fund in
the IT4Innovations Centre of Excellence project
(CZ.1.05/1.1.00/02.0070).
REFERENCES
Abadi, D. J., Ahmad, Y., Balazinska, M., Cherniack, M.,
Hwang, J.-h., Lindner, W., Maskey, A. S., Rasin, E.,
Ryvkina, E., Tatbul, N., Xing, Y., and Zdonik, S.
(2005). The design of the borealis stream processing
engine. In In CIDR, pages 277–289.
Arasu, A., Babcock, B., Babu, S., Cieslewicz, J., Datar, M.,
Ito, K., Motwani, R., Srivastava, U., and Widom, J.
(2004). STREAM: The stanford data stream manage-
ment system. Technical Report 2004-20, Stanford In-
foLab.
Chandramouli, B., Ali, M., Goldstein, J., Sezgin, B., and
Raman, B. S. (2010). Data stream management sys-
tems for computational finance. Computer, 43:45–52.
Chang, C.-C. and Lin, C.-J. (2011). LIBSVM: A library
for support vector machines. ACM Transactions on
Intelligent Systems and Technology, 2:27:1–27:27.
F¨ul¨op, L. J., T´oth, G., R´acz, R., P´anczl, J., Gergely, T.,
Besz´edes, A., and Farkas, L. (2010). Survey on com-
plex event processing and predictive analytics. Tech-
nical report, University of Szeged, Department of
Software Engineering.
Gaber, M. M., Zaslavsky, A., and Krishnaswamy, S. (2005).
Mining data streams: A review. SIGMOD Rec.,
34:18–26.
Golab, L. and
¨
Ozsu, M. T. (2003). Issues in data stream
management. SIGMOD Rec., 32:5–14.
Han, J., Kamber, M., and Pei, J. (2011). Data Mining: Con-
cepts and Techniques. Morgan Kaufmann Publishers
Inc., Waltham, MA, USA, third edition.
H´ebrail, G. (2008). In Fogelman-Souli, F., Perrotta, D.,
Piskorski, J., and Steinberger, R., editors, Mining
Massive Data Sets for Security, Advances in Data
Mining, Search, Social Networks and Text Mining,
and their Applications to Security, volume 19, chapter
Data stream management and mining, pages 89–102.
IOS Press.
Mikut, R. and Reischl, M. (2011). Data mining tools. Wiley
Interdisciplinary Reviews: Data Mining and Knowl-
edge Discovery, 1(5):431–443.
Shi, Z., Huang, Y., He, Q., Xu, L., Liu, S., Qin, L., Jia, Z.,
Li, J., Huang, H., and Zhao, L. (2007). MSMiner—a
developing platform for OLAP. Decis. Support Syst.,
42:2016–2028.
Thakkar, H., Laptev, N., Mousavi, H., Mozafari, B., Russo,
V., and Zaniolo, C. (2011). SMM: A data stream man-
agement system for knowledge discovery. In Abite-
boul, S., B¨ohm, K., Koch, C., and Tan, K.-L., edi-
tors, Proceedings of the 27th International Conference
on Data Engineering, ICDE 2011, April 11-16, 2011,
Hannover, Germany, pages 757–768. IEEE Computer
Society.
Wojnarski, M. (2008). Transactions on rough sets IX. chap-
ter Debellor: A Data Mining Platform with Stream
Architecture, pages 405–427. Springer-Verlag, Berlin,
Heidelberg.
ENASE2012-7thInternationalConferenceonEvaluationofNovelSoftwareApproachestoSoftwareEngineering
192