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Markov Analysis of Students’ Performance and Academic Progress in Higher Education

Author

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  • Brezavšček Alenka

    (University of Maribor, Faculty of Organizational Sciences, Kidričeva cesta 55a, 4000 Kranj, Slovenia)

  • Bach Mirjana Pejić

    (University of Zagreb, Faculty of Economics and Business, Trg J.F. Kennedyja 6, 10000 Zagreb, Croatia)

  • Baggia Alenka

    (University of Maribor, Faculty of Organizational Sciences, Kidričeva cesta 55a, 4000 Kranj, Slovenia)

Abstract

Background: The students’ progression towards completing their higher education degrees possesses stochastic characteristics, and can therefore be modelled as an absorbing Markov chain. Such application would have a high practical value and offer great opportunities for implementation in practice.Objectives: The aim of the paper is to develop a stochastic model for estimation and continuous monitoring of various quality and effectiveness indicators of a given higher education study programme.Method: The study programme is modelled by a finite Markov chain with five transient and two absorbing states. The probability transition matrix is constructed. The quantitative characteristics of the absorbing Markov chain, like the expected time until absorption and the probabilities of absorption, are used to determine chosen indicators of the programme.Results: The model is applied to investigate the pattern of students’ enrolment and their academic performance in a Slovenian higher education institution. Based on the students’ intake records, the transition matrix was developed considering eight consecutive academic seasons from 2008/09 until 2016/17. The students’ progression towards the next stage of the study programme was estimated. The expected time that a student spends at a particular stage as well as the expected duration of the study is determined. The graduation and withdrawal probabilities were obtained. Besides, a prediction on the students’ enrolment for the next three academic years was made. The results were interpreted and discussed.Conclusion: The analysis presented is applicable for all higher education stakeholders. It is especially useful for a higher education institution’s managers seeing that it provides useful information to plan improvements regarding the quality and effectiveness of their study programmes to achieve better position in the educational market.

Suggested Citation

  • Brezavšček Alenka & Bach Mirjana Pejić & Baggia Alenka, 2017. "Markov Analysis of Students’ Performance and Academic Progress in Higher Education," Organizacija, Sciendo, vol. 50(2), pages 83-95, May.
  • Handle: RePEc:vrs:organi:v:50:y:2017:i:2:p:83-95:n:1
    DOI: 10.1515/orga-2017-0006
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    References listed on IDEAS

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    1. F. Crippa & M. Mazzoleni & M. Zenga, 2016. "Departures from the formal of actual students' university careers: an application of non-homogeneous fuzzy Markov chains," Journal of Applied Statistics, Taylor & Francis Journals, vol. 43(1), pages 16-30, January.
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