Methodology for predicting the demand for university graduates using data mining techniques

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Abstract

The purpose of this research is to develop and validate an integrated methodology for predicting the demand for university graduates in a regional labor market by applying data-mining tools and machine-learning techniques. Employment monitoring data from Turgenev Orel State University for 2022–2024 served as the empirical basis. The Random Forest algorithm was used to forecast graduate employment rates across aggregated fields of study, while the K-means clustering method grouped specialties according to their demand levels. The analysis identified three stable clusters – “high”, “medium”, and “low” employment prospects – provided actionable recommendations for adjusting curricula and enrollment quotas, and highlighted programs that need additional interdisciplinary digital competencies. The resulting models demonstrated high accuracy (MAE = 13.33%, R2 = 0.78) and no multicollinearity issues, as confirmed by VIF values. The proposed methodology offers universities an effective tool for strategic enrollment planning, improving graduate employability, and real-time adaptation of educational offerings to the dynamic needs of the economy. It can also be embedded into digital education-management platforms and regional workforce-demand forecasting systems.

About the authors

Victoria Yu. Presnetsova

MIREA – Russian Technological University

Author for correspondence.
Email: presnetsova@mirea.ru
ORCID iD: 0000-0003-4714-4151
SPIN-code: 8462-7056
Scopus Author ID: 56743251000
ResearcherId: R-3326-2016

Cand. Sci. (Eng.), Associate Professor, associate professor, Department of Industrial Programming, Institute for Advanced Technologies and Industrial Programming

Russian Federation, Moscow

Igor S. Konstantinov

MIREA – Russian Technological University

Email: konstantinovi@mail.ru
ORCID iD: 0000-0002-8903-4690
SPIN-code: 6666-1523
Scopus Author ID: 56426832100
ResearcherId: ABI-6473-2020

Dr. Sci. (Eng.), Professor, Professor, Department of Industrial Programming, Institute for Advanced Technologies and Industrial Programming

Russian Federation, Moscow

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Supplementary files

Supplementary Files
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1. JATS XML
2. Fig. 1. Distribution of regions with the highest labor shortage by the end of Q3 2024 (based on the number of vacancies per unemployed person)

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3. Fig. 2. Sequence of steps for building predictive models based

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4. Fig. 3. Comparison of predicted and actual graduate employment rates by major fields of study (test sample)

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5. Fig. 4. Distribution of residuals of the predictive model (Random Forest)

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6. Fig. 5. Programming code for building a predictive model

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7. Fig. 6. Clusters of fields and specialties of graduate training

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8. Fig. 7. Analysis of employment rate distribution by clusters (based on Boxplot)

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