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Building an E-learning Recommender System Using Vector Space Model and Good Learners Average Rating

机译:使用向量空间模型和良好学习者平均评分构建电子学习推荐系统

摘要

An enormous amount of learning materials in e-learning has led to the difficulty on locating suitable learning materials for a particular learning topic, creating the need for content recommendation tools within learning context. In this paper, we aim to address this need by proposing a novel framework for an e-learning recommender system. Our proposed framework works on the idea of recommending learning materials based on the similarity of content items (using Vector Space Model) and good learnerspsila average rating strategy. This paper presents the overall architecture of the proposed system and its potential implementation via a prototype design.
机译:电子学习中大量的学习材料导致难以为特定的学习主题找到合适的学习材料,从而导致在学习环境中需要内容推荐工具。在本文中,我们旨在通过为电子学习推荐系统提出一个新颖的框架来满足这一需求。我们提出的框架基于以下建议:基于内容项的相似性(使用向量空间模型)和良好的学习者平均评分策略推荐学习材料。本文通过原型设计介绍了所提出系统的总体架构及其潜在的实现方式。

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