数据结构与编程课程中论坛主题的自动推荐和强化活动

IF 3.8 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS
Laura Plaza, Lourdes Araujo, Fernando López-Ostenero, Juan Martínez-Romo
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引用次数: 0

摘要

在线学习正迅速成为取代传统教育的热门选择。它的一个主要优势在于它提供的灵活性,允许个人根据他们独特的时间表和承诺定制他们的学习经历。此外,在线学习提高了教育的可及性,打破了地理和经济界限。在这项研究中,我们建议使用先进的自然语言处理技术来设计和实现一个推荐系统,该系统通过根据学生的需求定制材料和强化活动来支持电子学习学生。当学生在课程论坛上提出问题时,我们的推荐系统会提供其他讨论线程的链接,其中提出了相关的问题,并提供了额外的活动来加强对具有挑战性的主题的研究。我们开发了一个基于内容的推荐器,它利用了一种算法,能够提取关键短语、术语和嵌入,这些嵌入描述了学生查询中的概念,以及其他对话和强化活动中出现的概念,精度很高。推荐器考虑从查询中提取的概念与课程讨论论坛和练习数据库中涵盖的概念的相似性,为学生推荐最相关的内容。我们的结果表明,我们可以使用关键短语来代表文本内容,以高精度(80%以上)推荐帖子和活动。本研究的主要贡献有三点。首先,它集中在一个非常专业化和新颖的领域;其次,引入了一种基于学生查询的有效推荐方法。第三,这些建议不仅对眼前的问题提供了答案,而且还通过建议补充活动鼓励进一步学习。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Recommendation of Forum Threads and Reinforcement Activities in a Data Structure and Programming Course
Online learning is quickly becoming a popular choice instead of traditional education. One of its key advantages lies in the flexibility it offers, allowing individuals to tailor their learning experiences to their unique schedules and commitments. Moreover, online learning enhances accessibility to education, breaking down geographical and economical boundaries. In this study, we propose the use of advanced natural language processing techniques to design and implement a recommender that supports e-learning students by tailoring materials and reinforcement activities to students’ needs. When a student posts a query in the course forum, our recommender system provides links to other discussion threads where related questions have been raised and additional activities to reinforce the study of topics that have been challenging. We have developed a content-based recommender that utilizes an algorithm capable of extracting key phrases, terms, and embeddings that describe the concepts in the student query and those present in other conversations and reinforcement activities with high precision. The recommender considers the similarity of the concepts extracted from the query and those covered in the course discussion forum and the exercise database to recommend the most relevant content for the student. Our results indicate that we can recommend both posts and activities with high precision (above 80%) using key phrases to represent the textual content. The primary contributions of this research are three. Firstly, it centers on a remarkably specialized and novel domain; secondly, it introduces an effective recommendation approach exclusively guided by the student’s query. Thirdly, the recommendations not only provide answers to immediate questions, but also encourage further learning through the recommendation of supplementary activities.
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来源期刊
Applied System Innovation
Applied System Innovation Mathematics-Applied Mathematics
CiteScore
7.90
自引率
5.30%
发文量
102
审稿时长
11 weeks
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