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Please use this identifier to cite or link to this item: http://hdl.handle.net/10525/4209

Title: Learning Performance Improvement Through Participation in Online Seminar: Machine Learning Analysis
Other Titles: Подобряване ефективността на учене чрез участие в онлайн семинар: Aнализ чрез машинно обучение
Authors: Ivanova, Malinka
Keywords: eLearning Informatics
Learning Analytics
Learning Performance
Online Seminar
Competences
Machine Learning
Issue Date: 10-Jun-2022
Publisher: Institute of Mathematics and Informatics – Bulgarian Academy of Sciences
Citation: Ivanova, M. (2022). Learning Performance Improvement Through Participation in Online Seminar: Machine Learning Analysis, Science Series "Innovative STEM Education", volume 04, ISSN: 2683-1333, Institute of Mathematics and Informatics – Bulgarian Academy of Sciences, 69-78. DOI: https://doi.org/10.55630/STEM.2022.0410
Series/Report no.: Science Series "Innovative STEM Education", volume 04;10
Abstract: Learning performance is related to students’ learning activities during a learning process. Their learning behavior could lead to successful course accomplishment or not, to better or worse final marks. Seminar practices have their impact on development of some students’ competences like: topics analysis, discussion and presentation and the planned tasks concern learning performance. In online environment, the seminars could be organized in the form of different learning scenarios and it depends on the functional and technical features of the organized educational environment as well as on the course goal. In this paper an investigation and analysis of students’ participation in online seminars is conducted with aim to understand the dependence between their learning performance, online tasks realization and final results. eLearning informatics gives possibilities for usage contemporary methods for research and learning analytics as one of them is machine learning. Machine learning algorithms are utilized to group students according to their learning behavior and final outcome. The created analytical models could be in support of educators and students to improve their educational activities. The accuracy of machine learning algorithms is evaluated to find the best model according to collected data during one semester.
URI: http://hdl.handle.net/10525/4209
ISSN: 2683-1333
Appears in Collections:STEM, vol.4, 2022

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