用图卷积网络模型预测教育图数据中的链接预测选修课

Meilia Nur Indah Susanti, Y. Heryadi, Y. Rosmansyah, W. Budiharto
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引用次数: 0

摘要

个性化学习已经引起了教育领域众多研究者的关注。个性化学习是一种学生(学习者)在学习过程中起中心作用的教学模式。通过使用这种方法,教育方法和技术可以根据每个学习者独特的学习风格、背景、需求和以前的经验进行定制和调整,以更好地适应每个学习者。根据学习者已经学过的知识、已经知道的科目和已经掌握的技能,每个学生在个性化的学习过程中都会得到一个“学习计划”。这种方法不同于传统的方法或称为“一刀切”的方法。个性化学习的挑战在于如何将学习者以前的知识、技能和学习材料联系起来,从而将这些知识与新知识联系起来。本文提出了一种新颖的实现个性化学习的技术,该技术通过在高等教育学生和选修课程之间基于先前学习成绩的自动预测联系来实现个性化学习。在本研究中,图卷积网络(GCNs)用于解决学生和选修课程之间的链接预测任务。实证结果表明,GCN模型可用于预测学生选修课程,平均准确率为62.5%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Link Prediction in Educational Graph Data to Predict Elective Course using Graph Convolutional Network Model
Personalized learning has achieved the attention of many researchers in the Education field. Personalized learning is a teaching model in which students (learners) have a central role in the learning process. By using this approach, educational methods, and techniques are customized and adapted to be better suited for each learner, with their unique learning style, background, needs, and previous experiences. Based on what the learners have already learned, subjects have already known, and skills have already developed each student in a personalized learning process will get a "learning plan". This approach is different from a conventional approach or known as the "one size fits all" approach. The challenge of personalized learning is how to connect a learner’s previous knowledge, skills and with learning materials that will link that understanding with new knowledge. This paper presents a novelty technique to implement personalized learning by automating a predicted linkage between a student in higher education and elective courses based on previous learning achievement. In this study, Graph Convolutional Networks (GCNs) are used to address link prediction tasks between student and elective courses. The empirical results showed that the GCN model can be used to predict elective courses for a student with 62.5 % average accuracy.
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