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Modeling Learners and Contents in Academic-Oriented Recommendation Framework

机译:以学术为导向的推荐框架中的学习者和内容建模

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Lifelong learning is matter to knowledge society and Academic Recommendation is necessary to feed learners with the relevant and personalized contents. E-commerce recommendation system has made great successful in book suggestion, like Amazon. But these techniques are still not adapted to academic domain. Our study has found 4 factors, including learner's academic intention, social network, learning style and cognitive ability, which impact the effectiveness of AR system. This paper proposes a framework and model to build AR system. A working system based on the novel model has been constructed. This system which has explored 1099793 web page, 34737 videos, 910 experts, 13416 courses, 47390 publications, providing search, profiling, and suggestions functionality for 100k users.
机译:终身学习对知识社会至关重要,学术建议对于向学习者提供相关的个性化内容十分必要。电子商务推荐系统在图书推荐方面取得了巨大成功,例如亚马逊。但是这些技术仍然不适用于学术领域。我们的研究发现了四个因素,包括学习者的学习意图,社交网络,学习方式和认知能力,这些都会影响AR系统的有效性。本文提出了构建AR系统的框架和模型。构建了基于新型模型的工作系统。该系统浏览了1099793个网页,34737个视频,910个专家,13416个课程,47390个出版物,为10万用户提供了搜索,分析和建议功能。

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