Review of personalized recommendation techniques for learners in e-learning systems

Saman Shishehchi, S. Banihashem, N. Zin, S. Noah
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引用次数: 59

Abstract

With the rapidly increasing learning materials and learning resources, either offline or online, it is quite difficult to find suitable materials based on learner's need. Recommender systems help learners find the appropriate learning materials in which they would need to learn. This paper discusses about the personalized recommendation systems in e-learning and compares their recommendation techniques. Two concepts are the main discussion topics in this research. The first one is about the learner's requirement and the second one in about the personalized recommendation technique. Finally, this study proposes the knowledge based recommendation system as suitable recommendation technique. This recommendation aims to recommend to the learner, some materials based on the learner's need. By using the semantic relationship between learning materials and the learner's need, system can select the suitable materials as a recommendation to the learner. To develop the proposed knowledge based recommendation system is the next work for the future.
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电子学习系统中学习者个性化推荐技术综述
随着学习材料和学习资源的迅速增加,无论是线上还是线下,都很难根据学习者的需要找到合适的学习材料。推荐系统帮助学习者找到他们需要学习的合适的学习材料。本文讨论了电子学习中的个性化推荐系统,并对其推荐技术进行了比较。两个概念是本研究的主要讨论主题。第一部分是关于学习者的需求,第二部分是关于个性化推荐技术。最后,本研究提出了基于知识的推荐系统作为合适的推荐技术。本推荐书旨在根据学习者的需要向学习者推荐一些材料。系统利用学习材料与学习者需求之间的语义关系,选择适合学习者的材料进行推荐。提出的基于知识的推荐系统的开发是未来的下一步工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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