Prognozarea admiterii universitare bazată pe modele statistice şi inteligenţă artificială [Articol]

dc.contributor.authorLefter, Danro
dc.contributor.authorCapcelea, Mariaro
dc.date.accessioned2026-01-30T07:40:05Z
dc.date.issued2025
dc.description.abstractThis paper presents a predictive analysis system designed to estimate the future evolution of student enrollment in Moldovan universities. Using official data on natality (1980– 2023), student enrollment, and graduate statistics (2005–2023), the study employs a multi-model approach based on statistical indicators and machine learning forecasting methods. Models such as linear regression, polynomial regressions (degrees 2 and 3), exponential growth, and autoregressive (AR) analysis were implemented and compared. The models are integrated into an interactive Streamlit web application, allowing stakeholders to select forecasting horizons and visualize the future trends of university enrollment by specialty. Results show differentiated evolutions among specialities and highlight the importance of demographic trends in educational planning [1-2].en
dc.description.sponsorshipAceastă lucrare reprezintă rezultatul activității de cercetare desfășurate în cadrul proiectului „011302 Metode analitice și numerice pentru rezolvarea problemelor decizionale dinamice stochastice”.ro
dc.identifier.citationLEFTER, Dan şi Maria CAPCELEA. Prognozarea admiterii universitare bazată pe modele statistice şi inteligenţă artificială. In: Integrare prin cercetare şi inovare: conferinţa ştiinţifică naţională cu participare internaţională. Ştiinţe Exacte și ale naturii. Chișinău, 6-7 noiembrie 2025. Chișinău: CEP USM, 2025, pp. 797-801. ISBN 978-9975-62-989-8 (PDF). Disponibil: https://doi.org/10.59295/spd2025e.104ro
dc.identifier.isbn978-9975-62-989-8 (PDF)
dc.identifier.urihttps://doi.org/10.59295/spd2025e.104
dc.identifier.urihttps://msuir.usm.md/handle/123456789/19979
dc.language.isororo
dc.publisherCEP USM
dc.subjectautoregressionen
dc.subjecteducational forecastingen
dc.subjectenrollment predictionen
dc.subjectmachine learningen
dc.subjectstudent statisticsen
dc.titlePrognozarea admiterii universitare bazată pe modele statistice şi inteligenţă artificială [Articol]ro
dc.title.alternativeUNIVERSITARY ENROLLMENT FORECASTING THROUGH STATISTICAL AND AI-BASED MODELINGen
dc.typeArticle

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