基于学生信息和兴趣的人工智能学业指导与咨询系统

IF 3.8 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS Applied System Innovation Pub Date : 2023-12-28 DOI:10.3390/asi7010006
Hajar Majjate, Youssra Bellarhmouch, Adil Jeghal, Ali Yahyaouy, H. Tairi, Khalid Alaoui Zidani
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引用次数: 0

摘要

在过去几十年里,教育部门通过将人工智能(AI)融入教育环境,取得了令人瞩目的进步。然而,具体的教育过程,尤其是教育咨询,仍然依赖于传统的程序。目前辅导员与学生之间开展小组会议的方法无法提供个性化的帮助或个别关注,这会给学生造成压力,使他们难以对自己的课业和职业道路做出明智的决定。本文提出了一种辅导解决方案,旨在帮助高三学生选择合适的高等教育学术道路。该系统利用一个预测模型,通过考虑学业历史和学生偏好,确定学生被所选大学录取的可能性,并推荐类似的备选大学,以提供更多机会。我们根据摩洛哥 12 所公立高中 500 名毕业生的数据以及 31 所院校的资格标准开发了该模型。咨询系统由两个模块组成:一个是推荐模块,使用基于人气和内容的推荐;另一个是预测模块,使用休伯回归模型计算录取的可能性。该模型的表现优于其他 13 个机器学习模块,MSE 低至 0.0017,RMSE 为 0.0422,R 方值最高达 0.9306。最后,该系统可通过用户友好的网络界面访问。
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AI-Powered Academic Guidance and Counseling System Based on Student Profile and Interests
Over the past few decades, the education sector has achieved impressive advancements by incorporating Artificial Intelligence (AI) into the educational environment. Nevertheless, specific educational processes, particularly educational counseling, still depend on traditional procedures. The current method of conducting group sessions between counselors and students does not offer personalized assistance or individual attention, which can cause stress to students and make it difficult for them to make informed decisions about their coursework and career path. This paper proposes a counseling solution designed to aid high school seniors in selecting appropriate academic paths at the tertiary level. The system utilizes a predictive model that considers academic history and student preferences to determine students’ likelihood of admission to their chosen university and recommends similar alternative universities to provide more opportunities. We developed the model based on data from 500 graduates from 12 public high schools in Morocco, as well as eligibility criteria from 31 institutions and colleges. The counseling system comprises two modules: a recommendation module that uses popularity-based and content-based recommendations and a prediction module that calculates the likelihood of admission using the Huber Regressor model. This model outperformed 13 other machine learning modules, with a low MSE of 0.0017, RMSE of 0.0422, and the highest R-squared value of 0.9306. Finally, the system is accessible through a user-friendly web interface.
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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
期刊最新文献
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