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A High Level Architecture for Personalized Learning in Collaborative Networks

机译:协作网络中个性化学习的高级架构

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In Collaborative Network (CN) environments, creation of collective understanding about both the aimed outcome and the procedure for achieving it by its members is the antecedent to any successful co-working and co-development. While a part of the common CN knowledge is pre-existing to its establishment, once the collaboration activities begin the emergent knowledge also needs to be commonly understood within this environment. Creating such commonality in understanding is however quite challenging. This paper suggests a bottom-up approach to reach collective understanding by all individuals involved in these networks, namely by the staff involved at all organizations which participate in the CN. The proposed approach is founded on the idea of learning-together by the CN members to reach their collective understanding. In this approach, the domain/application experts in the CN act as the instructors and content providers, and assist with the modeling/remolding of the education domain for the CN environment. Considering that the individuals involved in the CN are highly diverse and have different backgrounds, their learning requirements are also highly varied. Aiming to reach common understanding in CNs, this paper first addresses the main challenges in this area of learning; it then presents the related state-of-the-art and proposes a high level architecture for personalized learning of the members in collaborative networks.
机译:在协作网络(CN)环境中,对于目标结果及其成员实现目标结果的过程的集体理解是任何成功的共同工作和共同发展的前提。虽然部分通用CN知识已经预先建立,但是一旦协作活动开始,在这种环境中也需要对新兴知识进行普遍理解。然而,在理解中建立这样的共性非常具有挑战性。本文提出了一种自下而上的方法,以使参与这些网络的所有个人,即参与CN的所有组织中涉及的人员,达到集体理解。提议的方法基于CN成员共同学习以达成其集体理解的思想。在这种方法中,CN中的域/应用程序专家充当指导者和内容提供者,并协助为CN环境建模/重塑教育领域。考虑到参与CN的个人高度不同且背景不同,他们的学习要求也存在很大差异。为了在CNs中达成共识,本文首先探讨了该学习领域的主要挑战。然后,它介绍了相关的最新技术,并提出了一种用于在协作网络中个性化学习成员的高级体系结构。

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