基于文本相似度的在线教材课程资源推荐研究

CONVERTER Pub Date : 2021-01-01 DOI:10.17762/converter.161
Ziyu Liu, Mengying Yao
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引用次数: 0

摘要

为了解决大学生在混合学习中难以快速准确地找到与所学课程相关的学习资源的问题。提出了一种基于文本相似度的在线教材课程资源推荐方法。首先,通过网络爬虫技术采集在线学习平台的课程资源数据。其次,对竞争数据进行预处理,剔除噪声数据,进行中文分词,并基于余弦相似度计算课程相似度,根据相似度排序得到课程推荐结果;第三,对推荐结果进行评价,并根据评价结果对相似度计算方法进行优化。最后,根据相似度排序结果向学习者推荐课程资源。根据在超级明星平台上学习的课程,实验推荐学银在线平台上类似的课程资源。结果表明,基于文本相似度的在线教材课程资源推荐方法能够快速、准确地为学习者推荐相关的在线教材课程资源,对在线课程资源推荐具有一定的参考意义和应用价值。
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Research on Recommendation of Online Materials Course Resources Based on Text Similarity
In order to solve the problem that it is difficult for college students to find learning resources related to thecourses they are learning quickly and accurately in blended learning. This paper proposes an online materials course resources recommendation method based on text similarity. Firstly, collecting the data of course resources on the online learning platform through web crawler technology. Secondly, preprocessing the data which contend deleting noise data, the Chinese word segmentation and calculating the course similarity based on cosine similarity then getting the course recommendation results according to the similarity ranking. Thirdly, evaluating the recommendation results and optimizing the similarity calculation method according to the evaluation results. Finally, the learners are recommended curriculum resources according to the similarity ranking results. According to the courses learned on the Superstar platform, the experiment recommends similar course resources on the XueYin Online platform. The results show that the online materials course resources recommendation method based on text similarity can recommend relevant online materials course resources for learners quickly and accurately, which has certain reference significance and application value for online course resources recommendation.
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