基于学生档案和进度的入学推荐系统

Fabricio Scaglioni, J. C. Mattos, M. Aguiar
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引用次数: 0

摘要

在过去的几十年里,已经取得了许多技术进步,目前,许多技术进步都与人工智能的应用有关,人工智能越来越多地应用于社会各个部门,甚至是高等教育机构。推荐系统已经在广泛的应用中使用。这项工作专注于社区和每天进行的学术过程,旨在通过推荐系统帮助本科生在入学时选择最适合学生学术时刻的学科。本文提出了建议的课程推荐,并以计算机科学课程为例进行了研究。因此,针对2019年上半年提出了建议,并与申请、注册和批准的科目进行了比较。在进行测试并与学生要求和参加的内容进行比较后,超过60%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enrollment Recommendation System based on Student Profile and Progress
In the last decades, many technological advances have been achieved and, currently, many with the application of Artificial Intelligence, which is increasingly being used in all sectors of society and even in higher education institutions. Recommender systems have been used in a wide spectrum of applications. Focused on the community and on the academic processes performed daily, this work aims to help undergraduate students at the time of enrollment through recommendation systems, which direct the choice of disciplines to those that best suit the student's academic moment. The article presents the proposed course recommender and uses a Computer Science course as a case study. As a result, recommendations were generated for the first half of 2019 and compared with the requested, enrolled and approved subjects. After carrying out the tests and comparing with what was requested and attended by the student, more than 60%.
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