Goal-based Course Recommendation

Weijie Jiang, Z. Pardos, Q. Wei
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引用次数: 70

Abstract

With cross-disciplinary academic interests increasing and academic advising resources over capacity, the importance of exploring data-assisted methods to support student decision making has never been higher. We build on the findings and methodologies of a quickly developing literature around prediction and recommendation in higher education and develop a novel recurrent neural network-based recommendation system for suggesting courses to help students prepare for target courses of interest, personalized to their estimated prior knowledge background and zone of proximal development. We validate the model using tests of grade prediction and the ability to recover prerequisite relationships articulated by the university. In the third validation, we run the fully personalized recommendation for students the semester before taking a historically difficult course and observe differential overlap with our would-be suggestions. While not proof of causal effectiveness, these three evaluation perspectives on the performance of the goal-based model build confidence and bring us one step closer to deployment of this personalized course preparation affordance in the wild.
基于目标的课程推荐
随着跨学科学术兴趣的增加和学术咨询资源的过剩,探索数据辅助方法以支持学生决策的重要性从未如此之高。我们以快速发展的关于高等教育预测和推荐的文献的发现和方法为基础,开发了一种新的基于递归神经网络的推荐系统,用于建议课程,帮助学生准备感兴趣的目标课程,并根据他们估计的先验知识背景和最近发展区域进行个性化。我们使用等级预测测试和恢复大学所阐述的先决关系的能力来验证模型。在第三次验证中,我们在学生上一门历史上比较难的课程之前的一个学期为学生提供完全个性化的推荐,并观察与我们潜在建议的不同重叠。虽然不是因果有效性的证明,但这三种基于目标模型的绩效评估观点建立了信心,并使我们更接近于在野外部署这种个性化课程准备服务。
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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