Proponent/Claimant

Hapsari Peni Agustin Tjahyaningtijas, Nanang Husin, Hasanuddin Al Habib, Asmunin Asmunin, Rindu Puspita Wibawa, Alim Sumarno, Jesse R. Paragas, Endang Susantini

Abstract

The use of Machine Learning exhibits significant promise in facilitating advancements in the field of education. It is vital to conduct a comprehensive review of existing research to ascertain the significance of utilizing Machine Learning as a viable approach to enhance educational advancements. This bibliometric analysis provides a comprehensive overview of the advancements in the application of machine learning techniques within the field of education. This study utilizes publication and citation data from many academic literature sources to elucidate prominent patterns, areas of research emphasis, and scholarly collaborations within this field. The findings of the bibliometric analysis reveal a significant increase in scholarly attention toward the application of machine learning in the field of education during the past several years. The scope of these investigations encompasses a diverse array of subjects, such as personalized learning, predictive analytics, automated evaluation, learning recommendations, and online exam proctoring. The findings of this study also demonstrate a notable rise in the level of collaboration among scholars from many fields, highlighting the significance of interdisciplinary approaches in tackling the intricate challenges associated with the integration of machine learning in education.

Name of Research Journal

International Conference on SDGs and Bibliometric Studies

Volume and Issue No.

Volume 450

Date/Year of Publication

November 2023

Citation

Tjahyaningtijas, H. P. A., Husin, N., Al Habib, H., Asmunin, A., Wibawa, R. P., Sumarno, A., ... & Susantini, E. (2023). Machine learning on academic education: Bibliometric studies. In E3S Web of Conferences (Vol. 450, p. 02010). EDP Sciences.