Hybrid Filtering Recommendation in E-Learning Environment

Lianhong Ding, Bingwu Liu, Qi Tao
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引用次数: 10

Abstract

Personalized recommendation in an e-learning system can actively introduce useful learning resources for learners. It is a “push” mechanism in contrast to the “pull” way like Web searching. At the same time it is also a very efficient way especially when users can not describe their needs exactly. This paper put forward an approach to recommend right learning resources for users with different learning needs by hybrid filtering method. Learning resources are organized by learning topics through text analysis. Users with similar learning interests are found out to form different common interest groups by user behavior tracing and recording. Then, two-level user profiles are built based on common interest group detection and text analysis. At last, learning resources are introduced to users according to user profiles by collaborative filtering and content-based filtering respectively. A time factor is also introduced into the building of user profiles, which makes user profiles adapt to user’s interest shifting.
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电子学习环境下的混合过滤推荐
电子学习系统中的个性化推荐可以主动为学习者介绍有用的学习资源。它是一种“推”机制,而不是像Web搜索那样的“拉”方式。同时,它也是一种非常有效的方法,特别是当用户不能准确地描述他们的需求时。本文提出了一种采用混合过滤方法为不同学习需求的用户推荐合适的学习资源的方法。通过文本分析,将学习资源按学习主题组织起来。通过对用户行为的追踪和记录,找出具有相似学习兴趣的用户,形成不同的共同兴趣群体。然后,基于共同兴趣组检测和文本分析,构建两级用户配置文件。最后,分别采用协同过滤和基于内容过滤的方法,根据用户档案向用户介绍学习资源。在用户档案的构建中引入了时间因素,使用户档案能够适应用户兴趣的变化。
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