This compendium introduces an artificial intelligence-supported solution to realize adaptive micro learning over open education resource (OER). The advantages of cloud computing and big data are leveraged to promote the categorization and customization of OERs micro learning context. For a micro-learning service, OERs are tailored into fragmented pieces to be consumed within shorter time frames.Firstly, the current status of mobile-learning, micro-learning, and OERs are described. Then, the significances and challenges of Micro Learning as a Service (MLaa S) are discussed. A framework of a service-oriented system is provided, which adopts both online and offline computation domain to work in conjunction to improve the performance of learning resource adaptation.In addition, a comprehensive learner model and a knowledge base is prepared to semantically profile the learners and learning resource. The novel delivery and access mode of OERs suffers from the cold start problem because of the shortage of already-known learner information versus the continuously released new micro OERs. This unique volume provides an excellent feasible algorithmic solution to overcome the cold start problem.
Geng Sun & Jun Shen
ADAPTIVE MICRO LEARNING: USING FRAGMENTED TIME TO LEARN [EPUB ebook]
Using Fragmented Time to Learn
ADAPTIVE MICRO LEARNING: USING FRAGMENTED TIME TO LEARN [EPUB ebook]
Using Fragmented Time to Learn
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Мова Англійська ● Формат EPUB ● Сторінки 152 ● ISBN 9789811207471 ● Розмір файлу 5.1 MB ● Видавець World Scientific Publishing Company ● Місто Singapore ● Країна SG ● Опубліковано 2020 ● Завантажувані 24 місяців ● Валюта EUR ● Посвідчення особи 7386868 ● Захист від копіювання Adobe DRM
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