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MODA: A Micro Adaptive Intelligent Learning System for Distance Education
Date
2008-10-22
Author
Serçe, Fatma Cemile
Alpaslan, Ferda Nur
Metadata
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The paper presents a multi-agent module, called MODA, to provide micro-level adaptiveness in learning management systems (LMS). The adaptiveness provides uniquely identifying and monitoring of the learner's learning process according to the learner's profile. The paper covers the pedagogical framework behind the adaptation mechanism, the architecture of MODA and its agents, the protocol providing communication between MODA and LMS, and a sample application of the module to an open source learning management system, OLAT. The study also discusses the possibilities of future interests.
Subject Keywords
Learner profile
,
Distance learning
,
Multi-agent systems
,
Intelligent learning management system
,
Adaptive learning systems
URI
https://hdl.handle.net/11511/74628
Conference Name
eChallenges, Proceedings of eChallenges Conference (22-24 Oct. 2008)
Collections
Department of Computer Engineering, Conference / Seminar
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F. C. Serçe and F. N. Alpaslan, “MODA: A Micro Adaptive Intelligent Learning System for Distance Education,” Stockholm, Sweden, 2008, p. 1487, Accessed: 00, 2021. [Online]. Available: https://hdl.handle.net/11511/74628.