Please use this identifier to cite or link to this item: https://er.knutd.edu.ua/handle/123456789/31395
Title: Traditional machine learning for adaptive management of education in crisis contexts
Authors: Krasnyuk, Svitlana
Keywords: crisis
innovative management
educational management
classical machine learning
Issue Date: Sep-2025
Publisher: Lulu Press, Inc., (IEDC)International Education Development Center, 2025
Citation: Krasniuk S. Traditional machine learning for adaptive management of education in crisis contexts / S. Krasniuk // Innovations and New Directions in Scientific Research : proceedings of the 2nd International Scientific Conference (Manchester, United Kingdom, 20 September 2025). – United Kingdom : Lulu Press, Inc. ; (IEDC) International Education Development Center, 2025. – рр. 163–167.
Abstract: Modern management systems operate in an environment of constant instability and crisis phenomena, where traditional approaches often lose their effectiveness. To ensure flexibility and strategic adaptability, intelligent technologies are needed that can process large amounts of data and make informed management decisions. The integration of classical machine learning into educational management is an effective tool in conditions of instability and crisis situations. This creates opportunities for comprehensive analysis, strategic planning and implementation of innovative solutions that increase the competitiveness of educational organizations. In general, the use of classical machine learning in adaptive education management ensures effective information processing, transparency of results, prompt response to changes and improvement of educational processes. Thus, machine learning becomes a key means of increasing the stability and competitiveness of educational institutions in conditions of constant transformations.
URI: https://er.knutd.edu.ua/handle/123456789/31395
Faculty: Інститут права та сучасних технологій
Department: Кафедра філології та перекладу (ФП)
Appears in Collections:Кафедра філології та перекладу (ФП)
Матеріали наукових конференцій та семінарів

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