Implementing a Machine Learning Approach to Predicting Students’ Academic Outcomes

Svyatoslav Oreshin, A. Filchenkov, Polina Petrusha, Egor Krasheninnikov, Alexander Panfilov, Igor Glukhov, Y. Kaliberda, Daniil Masalskiy, A. Serdyukov, V. Kazakovtsev, Maksim Khlopotov, Timofey Podolenchuk, I. Smetannikov, D. Kozlova
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引用次数: 4

Abstract

This research is dedicated to the problem of transforming ”linear” educational systems of higher education institutions into a new paradigm of person-centered, blended and individual education. This paper investigates role, application, and challenges of applying AI to predict the academic performance traditional of students: dropouts, GPA, publication activity and other indicators to decrease dropouts and make the learning process more personalized and adaptive. In the first part, we overview the process of data mining using internal university’s resources (LMS and other systems) and open source data from students’ social networks. Such an aggregation allows describing each student by socio-demographic and psychometric features. Further, we demonstrate how we can dynamically monitor students’ activities during the learning process to supplement the resulting features. In the second part of our research, we propose various static and dynamic targets for predictive models and demonstrate the results of predictions and comparisons of several predictive models. The research is based on the information on data processing of more than 20000 students in 2013-2019.
实现机器学习方法来预测学生的学业成绩
本研究致力于将高等教育机构的“线性”教育系统转变为以人为本、混合和个性化教育的新范式。本文研究了应用人工智能预测学生传统学业表现的作用、应用和挑战:辍学、GPA、发表活动等指标,以减少辍学,使学习过程更具个性化和适应性。在第一部分中,我们概述了利用大学内部资源(LMS和其他系统)和来自学生社交网络的开源数据进行数据挖掘的过程。这样的汇总可以通过社会人口统计和心理特征来描述每个学生。此外,我们还演示了如何在学习过程中动态监控学生的活动,以补充生成的功能。在研究的第二部分,我们提出了预测模型的各种静态和动态目标,并展示了几种预测模型的预测结果和比较。该研究基于2013-2019年2万多名学生的数据处理信息。
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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