IEEE Access (Jan 2024)

A Digital Recommendation System for Personalized Learning to Enhance Online Education: A Review

  • Dhananjaya. G. M.,
  • R. H. Goudar,
  • Anjanabhargavi A. Kulkarni,
  • Vijayalaxmi N. Rathod,
  • Geetabai S. Hukkeri

DOI
https://doi.org/10.1109/ACCESS.2024.3369901
Journal volume & issue
Vol. 12
pp. 34019 – 34041

Abstract

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This review delves into using e-learning technology and personalized recommendation systems in education. It examines 60 articles from prominent databases and identifies the different methods used in recommendation systems, such as collaborative and content-based approaches with a recent shift towards machine learning. However, the current personalized recommendation system faces challenges such as a lack of understanding of the content, student discontinuity, language barriers, confusion in selecting study materials, and inadequate infrastructure and funding. The review proposes using new digital technologies to address these issues, including Fluxy AI, Twin technology, AI-powered virtual proctoring, and Alter Ego. These technologies can create a dynamic and interactive learning environment, providing tailored learning experiences for students and insights for educators to provide targeted support and guidance. The integration of these technologies can improve individualized learning, increase understanding capacity and enhance the learning experience for students with speech disorders.

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