基于文本数据的视频推荐系统:在LMS和Serendipity评价中的应用

Natthanun Chantanurak, P. Punyabukkana, A. Suchato
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引用次数: 8

摘要

学习管理系统(LMS)已经成为当今时代教师和学生共同使用的工具。学生们专注于老师发布的材料,无论是幻灯片、讲座、课堂笔记还是其他文件。但是,有了互联网上庞大的知识库,学生应该能够从这些外部资源中学习,如果他们能识别出有用的资源。在这项工作中,我们提出了一个算法和一个应用程序,可以自动搜索和选择YouTube上与发布在学习管理系统(LMS)上的材料相关的视频。我们的应用程序叫做视频推荐系统(VRS)。它包含两个部分;API和文档处理。我们利用术语频率-逆文档频率(TF-IDF)来映射基于元数据的文档和视频。本研究中使用的评估方法是基于Serendipity,旨在衡量优选、意外或惊喜的结果。最后,我们将算法的结果与使用材料标题的直接搜索结果进行比较。A/B测试表明,我们的推荐优于传统搜索,VRS的平均Serendipity得分比标题搜索高0.196分,且具有显著性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Video Recommender System using textual data: Its application on LMS and Serendipity evaluation
Learning Management System (LMS) has become a tool common to teachers and students in this day and age. Students focus on the materials posted by their teachers, be they slides, lectures, class notes, or other documents. But with the massive pool of knowledge on the internet, students should be able to learn from these external resources if they can identify the useful ones. In this work, we propose an algorithm and an application that automatically search and select videos from YouTube that are relevant to the materials posted on Learning Management System (LMS). Our application is called Video Recommender System (VRS). It contains two parts; API and Document Processing. We utilized the Term Frequency-Inverse Document Frequency (TF-IDF) to map the documents and videos based on their metadata. The evaluation method used in this study is based on Serendipity which is designed to measure the preferable, unexpected or good-surprise outcomes. Finally, we compare the result of our algorithm to one from direct search using material titles. A/B testing revealed that our recommendations outperform the traditional search and the average Serendipity scores for VRS is 0.196 greater than that of the title search with significance.
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