Learners Classification for Personalized Learning Experience in e-Learning Systems

The investigators are inspired by the increasing need and the demand for educational applications and the Learning Management Systems which provide learning objects centered on the learning style of the learners. The technique in which the learners acquire, process, gain the information is unique; t...

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Veröffentlicht in:International journal of advanced computer science & applications 2021, Vol.12 (4)
Hauptverfasser: MARTIN, A. JOHN, MARIA, M., Sagayaraj, F.
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container_title International journal of advanced computer science & applications
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description The investigators are inspired by the increasing need and the demand for educational applications and the Learning Management Systems which provide learning objects centered on the learning style of the learners. The technique in which the learners acquire, process, gain the information is unique; these unique characteristics affect their learning process. Hence it is essential to consider and understand the uniqueness among the learners to deliver learner-centric learning objects. The investigators present a system to classify the learners based on the time spent by the learner on learning content of different types. The types of learning content are identified with the percentage of visual, auditory, read/write and kinesthetic in learning object. The prominent learning style called VARK (Visual, Auditory, Read/Write and Kinesthetic) is used to classify the learners. This system classifies the learner and recommends the learning objects based on their learning preference, it also facilitates the faculty members or the content creators to prepare and provide personalized learning objects based on the learning style of the learners.
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subjects Classification
Cognitive style
Customization
Distance learning
Personalized learning
title Learners Classification for Personalized Learning Experience in e-Learning Systems
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