Publication | Closed Access
Architecture of an Adaptive Personalized Learning Environment (APLE) for Content Recommendation
17
Citations
20
References
2018
Year
Unknown Venue
EngineeringInformation RetrievalData ScienceData MiningUser ExperienceUser ModelingContent RecommendationLearning AnalyticsComputer SciencePersonalized LearningPersonalized SearchLearning ObjectsCold-start ProblemAdaptive Hypermedia SystemLearner Monitoring UnitCollaborative FilteringText MiningInformation Filtering System
With the development of sophisticated learning environments and learner-centric didactic approaches, personalized learning is in high demand. Personalization in learning environments occurs when such systems fit the learner profiles, which help in increasing their performance and quality of learning. Personalized learning refers to the pedagogy where the pace of learning, the instructional preferences and the learning objects are optimized as per the needs of each learner. To support customization, recommender systems can be used to recommend appropriate learning objects (LOs) corresponding to the learner attributes. This paper proposes an architecture of an Adaptive Personalized Learning Environment (APLE) and its features. APLE assists the learners by content recommendation and adapts to the learning preferences and performance of the learner. It has three modules such as Learner modelling Unit (LModU), Content Managing Unit (CMU) and Learner Monitoring Unit (LMU). LModU creates a Learner Model (LM) from the learner attributes.
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