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A social network-based teacher model to support course construction

Published: 01 October 2015 Publication History

Abstract

The Teacher Model renders also a network of concepts and learning materials used in teacher's courses.The model comprises a concept of learning material reputation, based on the usage of such material.The model can support rapid analysis and selection of learning material for course construction.The model evolves dynamically, while the teacher participates in her/his community of teachers. On line education is a student centred activity, and most of the research in this field focuses on students; yet the quality of teaching is undoubtedly the basic ingredient for a successful learning. In particular, fostering new forms of collaboration between students and teachers, i.e. pursuing co-learning aspects of e-learning, probably needs giving teachers new means of collaboration, also among themselves. In this paper, we tackle the aim of providing the teacher with social collaboration tools, to support the process of course construction. Such a process comprises several distinct steps, from concept mapping, through selection of suitable learning material, to the final stages of delivery in a Learning Management System. It is an heavy process, through which teachers have to spend a lot of time to build or to retrieve the right learning material from local databases or from specialized repositories on the web. The support we foresee should exploit the knowledge of the whole teaching community, in which the teacher acts, to help her/him in doing the above described job. By "knowledge" we mean basically a representation of the ways of usage of learning materials, by the teachers in the community for their courses. To start on a solid footing, here we address the topic of modeling the teacher. The model we define aims to give teachers a personalized support, encompassing consideration for their own pedagogy, teaching styles, and teaching experience during course creation. It is deemed to consider all those issues in a dynamic way and to guide the teacher towards the best didactic choices.

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  • (2020)K-OpenAnswer: a simulation environment to analyze the dynamics of massive open online courses in smart citiesSoft Computing - A Fusion of Foundations, Methodologies and Applications10.1007/s00500-020-04696-z24:15(11121-11134)Online publication date: 22-Jan-2020
  1. A social network-based teacher model to support course construction

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    cover image Computers in Human Behavior
    Computers in Human Behavior  Volume 51, Issue PB
    October 2015
    847 pages

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    Elsevier Science Publishers B. V.

    Netherlands

    Publication History

    Published: 01 October 2015

    Author Tags

    1. Learning material reputation
    2. Social-collaborative e-learning
    3. Teacher model
    4. Teaching style
    5. Technology enhanced learning

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    • (2020)K-OpenAnswer: a simulation environment to analyze the dynamics of massive open online courses in smart citiesSoft Computing - A Fusion of Foundations, Methodologies and Applications10.1007/s00500-020-04696-z24:15(11121-11134)Online publication date: 22-Jan-2020

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