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An Adaptive Framework for Recommender-Based Learning Management Systems

机译:基于推荐者的学习管理系统的自适应框架

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There are a number of existing frameworks for recommendation systems that have been identified in domains such as e-commerce and tourism. The aspects of user profiles, adaptation and group models from the e-commerce and tourism frameworks can be applied to education provided they are customised through incorporating principles of pedagogy such as behavioural theories. Recommendation systems can be adopted to support personalised/differentiated teaching and learning. The aim of this research is to develop an adaptive recommender-systems-based framework for differentiated teaching and learning on eLearning platforms, that is, learning management systems (LMS). Through a literature review, 40 attributes of personalized learning were identified. The Multi-Attribute Utility Theory (MUAT) was used to identify the 10 top attributes to go in as personalized learning framework components. From a population of 1203 students from College X, a sample of 200 students was purposively selected for the research on the basis of their familiarity with College X's eLearning system. 103 students responded to the questionnaire, representing a response rate of 52%. From the responses of the students, the following top ten (10) attributes were identified for inclusion in the personalised learning platforms: culture, emotional/mental state, socialisation, motivation, learning preferences, prior knowledge, educational background, learning/cognitive style, and navigation and learning goals. A theory-driven adaptive recommender-based framework was derived from a combination of literature review and the attributes derived from the research.
机译:在电子商务和旅游业等领域,已经确定了许多现有的推荐系统框架。电子商务和旅游业框架中的用户配置文件,适应和组模型的各个方面可以应用于教育,只要它们通过结合诸如行为理论之类的教学法进行定制即可。可以采用推荐系统来支持个性化/差异化的教学。这项研究的目的是开发一种基于自适应推荐者系统的框架,用于在eLearning平台(即学习管理系统(LMS))上进行差异化的教与学。通过文献综述,确定了个性化学习的40个属性。多属性效用理论(MUAT)用于识别10个最重要的属性,以作为个性化学习框架组件。从X学院的1203名学生中,有选择地抽取200名学生作为样本,是基于他们对X学院的在线学习系统的熟悉程度。问卷调查的学生103名,回答率为52%。根据学生的回答,确定了以下十(10)个属性,可以包含在个性化学习平台中:文化,情感/心理状态,社交,动机,学习偏好,先验知识,教育背景,学习/认知方式,以及导航和学习目标。理论驱动的基于自适应推荐者的框架是从文献综述和研究得出的属性中得出的。

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