2014
DOI: 10.15680/ijirset.2014.0309049
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A Web Based Recommendation System for Personal Learning Environments Using Hybrid Collaborative Filtering Approach

Abstract: ABSTRACT:The large growth of Web has influenced the generation of huge e-learning resources. This work is focused to devise a personal recommendation system that will address the sparsity and cold-start problems and that will provide a have a more diverse recommendation list for each learner. Here Improved Neighborhood-based Collaborative filtering and Hybrid Genetic algorithm with Particle Swarm Optimization (PSO) method is implemented. These techniques are employed for improving the diversity, and the conver… Show more

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Cited by 5 publications
(2 citation statements)
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“…The user interface ensures a seamless experience, with intuitive navigation, interactive features, and visual representations of colleges. The proposed system also incorporates college comparison, evaluation tools, a college predictor based on JEE rank, and book/course purchase links as affiliate links [26] . With the integration of advanced book filtering, sorting options, book availability, and pricing information, students can make well-informed decisions.…”
Section: Transparency and Trustmentioning
confidence: 99%
“…The user interface ensures a seamless experience, with intuitive navigation, interactive features, and visual representations of colleges. The proposed system also incorporates college comparison, evaluation tools, a college predictor based on JEE rank, and book/course purchase links as affiliate links [26] . With the integration of advanced book filtering, sorting options, book availability, and pricing information, students can make well-informed decisions.…”
Section: Transparency and Trustmentioning
confidence: 99%
“…Another example of the full packaged solution is a system that can automatically configure the optimal learning route for students on a set of loaded learning materials (Govindarajan, Kumar & Kinshuk, 2017). Sommer et al (2014) in their works describe the online system of recommendations for e-learning in engineering education, which can also be designated as a full packeged solution. A number of project interactive learning solutions can also be considered as full packaged solutions (Viel et al, 2015).…”
Section: Analysis Of Foreign Studiesmentioning
confidence: 99%