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10.5593/sgemsocial2017/35/S13.091

PLANNING THE NUMBER OF FIRST YEAR STUDENTS AT UNIVERSITY ON THE EXAMPLE OF MAGISTRACY

N.K. Zarubina, O.V. Ovchinkin, A.I. Pykhtin, G.S. Titova
Monday 9 October 2017 by Libadmin2017

References: 4th International Multidisciplinary Scientific Conference on Social Sciences and Arts SGEM 2017, www.sgemsocial.org, SGEM2017 Conference Proceedings, ISBN 978-619-7408-22-5 / ISSN 2367-5659, 24 - 30 August, 2017, Book 3, Vol 5, 691-698 pp, DOI: 10.5593/sgemsocial2017/35/S13.091

ABSTRACT

The approach is considered, which allows the decision maker to determine not only the need for the announcement of admission to a current master educational program, but also the number of students enrolled in master educational programs. For decision-making on the announcement of foster campaign authors offer to use a majority block on the basis of the recommendations obtained by the classical methods of cluster analysis, Kohonen neural network (which make it possible to divide educational programs into clusters, interpreted as separate groups with «successful», «intermediate» and «unsuccessful» admission), and processing data based on the Rasch model (which allows to rank master educational programs on the success of admission). The formula for planning the number of students in magistracy is proposed. The summarize of the results of using the software implementing the proposed methods for planning the numbers of performance strategic development program at Southwest state University in 2016 is shown.

Keywords: planning, Rasch model, Kohonen neural network

PAPER DOI: 10.5593/sgemsocial2017/35/S13.091 ; PLANNING THE NUMBER OF FIRST YEAR STUDENTS AT UNIVERSITY ON THE EXAMPLE OF MAGISTRACY

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