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Development of a Knowledge Graph-Based Model for Recommending MOOCs to Supplement University Educational Programs in Line With Employer Requirements

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dc.contributor.author RAMAZANOVA, VALIYA
dc.contributor.author SAMBETBAYEVA, MADINA
dc.contributor.author SERIKBAYEVA, SANDUGASH
dc.contributor.author SADIRMEKOVA, ZHANNA
dc.contributor.author YERIMBETOVA, AIGERIM
dc.date.accessioned 2026-03-11T04:36:54Z
dc.date.available 2026-03-11T04:36:54Z
dc.date.issued 2024
dc.identifier.issn 2169-3536
dc.identifier.other DOI 10.1109/ACCESS.2024.3519263
dc.identifier.uri http://repository.enu.kz/handle/enu/30060
dc.description.abstract The modern labor market demands that educational institutions prepare specialists capable of effectively responding to rapidly changing professional standards and technologies. In this regard, the use of innovative approaches to adapt educational programs has become a key factor. This study is dedicated to developing a methodology for using heterogeneous knowledge graphs to create a recommendation system aimed at bridging the gap between existing educational courses and the dynamically changing requirements of the labor market. The central element of the study is the use of knowledge graphs to aggregate and analyze diverse data on skills, job vacancies, and educational courses. Knowledge graphs not only structure large volumes of information but also visualize complex connections between various educational modules and professional requirements. This approach fosters a deeper understanding of how educational programs can be adjusted to match the market specifics. An important aspect of the study is the application of multilingual semantic similarity algorithms to analyze and match skills. These algorithms play a key role in determining the degree of correspondence between the skills listed in educational programs and courses, and those required for specific job vacancies. The use of natural language processing techniques allows not only capturing explicit keyword matches, but also recognizing deep semantic connections, which is an integral part of accurate matching in educational and professional domains. The results of the study demonstrate that the proposed methodology can effectively analyze the multilingual relationships between educational and professional skills, which improves personalized courses and job recommendations. Our study contributes to the literature by proposing a new methodology for building recommendations that improves the accuracy of personalized educational and career recommendations, and facilitates the adaptation of educational programs to dynamic changes in the labor market. ru
dc.language.iso en ru
dc.publisher IEEE Access ru
dc.relation.ispartofseries VOLUME 12;193313
dc.subject Knowledge graphs ru
dc.subject recommendation system ru
dc.subject integration of education and labor market ru
dc.subject recruitment websites ru
dc.subject curriculum ru
dc.subject skills ru
dc.subject job vacancies ru
dc.subject massive open online courses (MOOCs) ru
dc.subject semantic similarity ru
dc.subject machine learning algorithms ru
dc.subject natural language processing ru
dc.subject skill similarity ru
dc.subject data analysis ru
dc.subject ontological model ru
dc.subject skill embeddings ru
dc.subject vector representation ru
dc.subject reskilling ru
dc.subject professional development ru
dc.subject career advancement ru
dc.title Development of a Knowledge Graph-Based Model for Recommending MOOCs to Supplement University Educational Programs in Line With Employer Requirements ru
dc.type Article ru


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