Application of Markov chains to forecasting tasks in sociocenose
https://doi.org/10.54596/2958-0048-2024-3-165-171
Abstract
Professional development is an important process that affects people's way of life. Supporting students at the moment of choosing a university, during the learning process, can help them make important career decisions and increase their employability. The paper proposes an approach to modeling the behavior of an applicant using Markov chains, and provides some interpretations. The Markov chain is widely used for modeling and analyzing stochastic systems in various fields of science and technology. The results of the study can be useful for the university administration, career consultants when planning career guidance activities.
About the Authors
L. B. KurmashevaKazakhstan
Master, lecturer of the Department of Information and Communication Technologies, Kozybayev University.
Petropavlovsk
Y. W. Neradovskaya
Russian Federation
PhD in Economics, Associate Professor, Department of Statistics and Econometrics, Federal State Budget Educational Institution of Higher Education "Saint-Petersburg State University of Economics".
Saint Petersburg
I. G. Kurmashev
Kazakhstan
Candidate of Technical Sciences, Head of Chair Information and Communication Technologies, Kozybayev University.
Petropavlovsk
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Review
For citations:
Kurmasheva L.B., Neradovskaya Y.W., Kurmashev I.G. Application of Markov chains to forecasting tasks in sociocenose. Vestnik of M. Kozybayev North Kazakhstan University. 2024;(3 (63)):165-171. https://doi.org/10.54596/2958-0048-2024-3-165-171