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Program of the Discipline

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bstract The knowledge and skills acquired during the study of the discipline

"Intelligent Data Analysis" are integral components of the formation of

professional competence and an important aspect of academic and professional

training of students. The course program is designed for students, for whom the use

of computer technology in professional activities is a prerequisite for professional

success. The discipline program involves a comprehensive study of the main

aspects of the methods and models of data classification in the framework of a

competent approaches.

The course of the intellectual data analysis includes the main aspects of the

implementation of algorithms solutions to the problems of processing large

amounts of information, is one of the basic disciplines of professional training of

students, and it is based on the use of modern learning technologies.

Key words: clusterization, method of "nearest neighbor", precedence

considerations, data visualization, cross-tabulation, trust networks, neural

networks, genetic algorithms.

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