Publication: Designing intelligent Web-based e-learning based on Web 2.0 and agents-based model
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Issued Date
2010-12-01
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2-s2.0-79955141963
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Mahidol University
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SCOPUS
Bibliographic Citation
Proceedings of the IADIS International Conference e-Learning 2010, Part of the IADIS Multi Conference on Computer Science and Information Systems 2010, MCCSIS 2010. Vol.2, (2010), 130-134
Suggested Citation
Jarernsri L. Mitrpanont, Somchart Fugkeaw, Teerapat Pachimkul, Wudhichart Sawangphol Designing intelligent Web-based e-learning based on Web 2.0 and agents-based model. Proceedings of the IADIS International Conference e-Learning 2010, Part of the IADIS Multi Conference on Computer Science and Information Systems 2010, MCCSIS 2010. Vol.2, (2010), 130-134. Retrieved from: https://repository.li.mahidol.ac.th/handle/123456789/28973
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Title
Designing intelligent Web-based e-learning based on Web 2.0 and agents-based model
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Abstract
In this paper, we propose the E-Learning Web-based Design Model based on Web Service and Web 2.0 model, extending Moodle open software to construct additional supporting features of e-Learning system. The basic features of Moodle are adopted and extended to support advanced functions of the e-learning. To this end, Web 2.0 renders social network features and provides a promising channel to students, instructors, and administrators. Therefore, the customized Moodle system and Web 2.0 E-learning are integrated to provide a more accessible and fine-grained design of E-Learning system. To handle the multiple users using several services, we apply agents system to serve the tasks of each service cooperatively. In addition, we accommodate user feedback management (UFM) function to improve the maintenance process and the functionality of e-Learning system by allowing users to propose any ideas about their view on the E-learning system they want via the social networking channel. To incorporate the feedback and requirements from users, such information is retained and analyzed to generate the recommendation profiles which will be used for further improvement of design and performance of the system. © 2010 IADIS.
