ALBERT-Based Personalized Educational Recommender System: Enhancing Students’ Learning Outcomes in Online Learning

Main Article Content

Ipseeta Nanda, Sowmya M.R., Lizina Khatua, Panduranga Ravi Teja, Pratibha Deshmukh

Abstract

Online learners must navigate vast educational resources to find materials that meet their needs. This study introduces an ALBERT-based personalized educational recommender system to improve student learning. ALBERT (A Lite BERT), an optimized variant of the BERT algorithm, captures contextualized word representations and understands the semantic meaning of learning resources, student profiles, and interactions. This study evaluates the ALBERT-based recommender system’s personalized learning recommendations. To assess learning outcomes, a diverse group of students from different educational domains is evaluated. Before and after the recommender system, academic performance, knowledge retention, and engagement are assessed. User satisfaction surveys assess recommendation quality, relevance, and user experience. The recommender system uses ALBERT’s model optimization to improve recommendation accuracy, learner engagement, and personalized learning. The evaluation shows the ALBERT-based personalized recommender system improves online learning outcomes. System-generated recommendations boost student engagement, knowledge retention, and academic performance. User satisfaction surveys show that the ALBERT-based system meets learners’ needs by providing relevant and high-quality recommendations. This research shows how advanced deep learning algorithms like ALBERT can improve personalized online learning. ALBERT’s optimized training and inference speeds up the recommender system’s scalability. This empowers learners to access tailored and high-quality educational resources, maximizing their learning outcomes and potential in online learning.

Article Details

How to Cite
Ipseeta Nanda, et al. (2023). ALBERT-Based Personalized Educational Recommender System: Enhancing Students’ Learning Outcomes in Online Learning. International Journal on Recent and Innovation Trends in Computing and Communication, 11(10), 2190–2201. https://doi.org/10.17762/ijritcc.v11i10.8906
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Articles
Author Biography

Ipseeta Nanda, Sowmya M.R., Lizina Khatua, Panduranga Ravi Teja, Pratibha Deshmukh

Ipseeta Nanda1*, Sowmya M.R.2, Lizina Khatua3, Panduranga Ravi Teja4, Pratibha Deshmukh5

1School of Computer Science and Engineering, IILM University,

Greater Noida, UP, India

Email: ipseeta.nanda@gmail.com

2Department of Computer Science and Engineering, Nitte Meenakshi Institute of Technology,

Bangalore, India.

Email: sowmyamr@gmail.com

3School of Electronics Engineering, KIIT Deemed to be University,

Bhubaneswar, India.

Email: lizina_khatua@rediffmail.com

4Koneru Lakshmiah Education foundation,

Guntur, Andhra Pradesh

Email: praviteja@kluniversity.in

5University of Mumbai, Bharati Vidyapeeth’s Institute of Management and Information Technology, Navi Mumbai

Email: pratibha.deshmukh@bharatividyapeeth.edu