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首页> 外文期刊>International Journal of Emerging Technologies in Learning (iJET) >Ontology and Rule-Based Recommender System for E-learning Applications
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Ontology and Rule-Based Recommender System for E-learning Applications

机译:基于本体和基于规则的电子学习推荐系统

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The continuous growth of the internet has given rise to an overwhelming mass of learning materials. Which has increased the demand for a recommendation system to filter information and to deliver the learning materials that fit learners learning context. In this paper, we propose an architecture of a semantic web based recommender system. The proposed architecture is a redesigned architecture of the classical 3-tiers web application architecture with an additional semantic layer. This layer holds two semantic subsystems: an Ontology-based subsystem and SWRL (Semantic Web Rule Language) rules one. The Ontology subsystem is used as a reusable and sharable domain knowledge to model the learning content and context. The SWRL rules are used as a recommendation and filtering technique based on learning object relevance and weighting. These rules are organized into four categories: Learning History Rules (LHR), Learning Performance Rules (LPR), Learning Social Network Rules (LSNR) and Learning Pathway Rules (PR).
机译:互联网的持续发展带来了大量的学习资料。这就增加了对推荐系统的需求,该推荐系统可以过滤信息并提供适合学习者学习环境的学习材料。在本文中,我们提出了一种基于语义网络的推荐系统的体系结构。所提出的体系结构是对带有附加语义层的经典3层Web应用程序体系结构的重新设计的体系结构。该层包含两个语义子系统:一个基于本体的子系统和一个SWRL(语义Web规则语言)规则。本体子系统用作可重用和可共享的领域知识,以对学习内容和上下文进行建模。 SWRL规则用作基于学习对象相关性和权重的推荐和过滤技术。这些规则分为四类:学习历史规则(LHR),学习绩效规则(LPR),学习社交网络规则(LSNR)和学习途径规则(PR)。

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