Отримано 25.11.2021, Доопрацьовано 23.02.2022, Прийнято 24.03.2022

Огляд сучасного стану систем підтримки абітурієнтів закладів вищої освіти

Христина Зуб, Павло Жежнич

Одним із стратегічно важливих процесів діяльності вищого навчального закладу є вступна кампанія. В суспільстві інформації та знань ефективність його реалізації залежить від багатьох факторів, одним із яких є використання інформаційних технологій. Тому, метою цієї роботи є вивчення поточних досліджень та визначення їх тенденцій, спрямованих на підтримку прийняття рішень щодо закладу вищої освіти та спеціальності з точки зору абітурієнтів. У цьому літературному огляді використано наукометричні бази даних Scopus та Web of Science, а також пошукову систему Google Scholar. Основні висновки полягають у виділення трьох напрямів досліджень, які створюють внесок  у цій темі: прогнозування успішності вступу, рекомендація спеціальності або навчального закладу та дослідження факторів, що впливають на вибір абітурієнта. Огляд свідчить, що найпоширенішим є використання добування та аналізу даних для вирішення завдань дослідженнь. Результати цього дослідження дозволяють визначити ключові моменти, які є критичними на початковому етапі вирішення задач підтримки прийняття рішень, та виявити основні майбутні напрямки досліджень

вступники, заклад вищої освіти (ЗВО), спеціальність, підтримка прийняття рішень, огляд літератури
28-36
Zub, K., & Zhezhnych, P. (2022). An overview of the current progress of the hei’s support systems from the entrants’ perspectives. Information Technologies and Computer Engineering, 19(2), 28-36. https://doi.org/10.31649/1999-9941-2022-53-1-28-36

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