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Paper:
Language: English:

Contribution to Creation of Complex System Macrosituations


Eva Ocelíková and Ladislav Madarász


Department of Cybernetics and Artificial Intelligence, Technical University of Kosice, Letná 9 04120 Kosice, Slovak Republic


Received: July 2, 2002

Accepted: August 2, 2002


Keywords: situation control, macrosituation, attribute, classification, dimension reduction, principal component

Journal ref: Journal of Advanced Computational Intelligence and Intelligent Informatics, Vol.6, No.2 pp. 79-83, 2002

Abstract



This paper deals with the creation of multidimensional data classes – macrosituations – by decreasing their dimension. A large number of monitored attributes in examined situations in complex systems often complicates technical realization of classification and extends the time needed for providing a decision. It is possible to decrease the dimension of situations and, simultaneously, to not decrease decision-making quality. The main subject relates to a possible approach – the Principal Component Method. The basis of this method lies in finding a linear transformation of original p-dimensional space of attributes into a new p\'-dimensional space of attributes where p\'≤p. New attributes, called principal components, arise in a suitable linear combination of original attributes and are sorted in descending order based on their variance.
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