With the increasing use of e-learning in various fields, there is a growing need to analyse and process big data generated from student interactions with digital learning systems. This data includes test results, content interactions, and learner behavioural data. High dimensionality in data can hinder analysis using AI and machine learning, necessitating dimensionality reduction to enhance model efficiency and reduce computational complexity. The study examines dimensionality reduction techniques like PCA, LDA, autoencoders, and t-SNE in e-learning. It finds traditional methods effective, but advanced methods like deep autoencoders and hybrid AI models offer superior performance. UMAP outperforms t-SNE for clustering and visualisation tasks.
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Nabil Mohammed Ali Munassar
Monia Abdullah Ahmed Al-hobishi
Journal of Science and Technology
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Analyzing shared references across papers
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Munassar et al. (Mon,) studied this question.
www.synapsesocial.com/papers/68c1aab854b1d3bfb60e295c — DOI: https://doi.org/10.20428/jst.v30i7.3002