Online Learning Video Recommendation System Based on Course and Sylabus Using Content-Based Filtering

F. Ramadhan, Aina Musdholifah
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引用次数: 3

Abstract

Learning using video media such as watching videos on YouTube is an alternative method of learning that is often used. However, there are so many learning videos available that finding videos with the right content is difficult and time-consuming. Therefore, this study builds a recommendation system that can recommend videos based on courses and syllabus. The recommendation system works by looking for similarity between courses and syllabus with video annotations using the cosine similarity method. The video annotation is the title and description of the video captured in real-time from YouTube using the YouTube API. This recommendation system will produce recommendations in the form of five videos based on the selected courses and syllabus. The test results show that the average performance percentage is 81.13% in achieving the recommendation system goals, namely relevance, novelty, serendipity and increasing recommendation diversity.
基于内容过滤的基于课程和教学大纲的在线学习视频推荐系统
使用视频媒体学习,比如在YouTube上看视频,是一种常用的学习方法。然而,有这么多的学习视频,找到合适的视频内容是困难和耗时的。因此,本研究构建了一个基于课程和教学大纲的视频推荐系统。推荐系统通过使用余弦相似度方法寻找课程和教学大纲与视频注释之间的相似性来工作。视频注释是使用YouTube API从YouTube实时捕获的视频的标题和描述。该推荐系统将根据所选课程和教学大纲以五个视频的形式提出推荐。测试结果表明,在实现推荐系统目标,即相关性、新颖性、偶然性和增加推荐多样性方面,平均性能百分比为81.13%。
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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12 weeks
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