学生知识熟练度诊断的前提注意模型

Haiping Ma, Jinwei Zhu, Shangshang Yang, Qi Liu, Haifeng Zhang, Xingyi Zhang, Yunbo Cao, Xuemin Zhao
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引用次数: 4

摘要

随着智能教育平台的快速发展,如何提高对学生知识熟练程度的诊断性能成为一个重要的问题,例如,通过引入知识概念的前提关系。不幸的是,在现有的方法中,不同的前身概念对后继概念的差异影响仍然没有得到充分的探讨。为此,我们提出了学生知识熟练度诊断的前提注意模型(PAKP),以了解前导概念对后继概念的注意权重,并对其建模以推断学生的知识熟练度。具体来说,给定学生的回答记录和知识前提图,我们设计了一个嵌入层来输出学生、练习和概念的表示。通过融合层中有效的注意机制计算概念间的影响系数。最后,根据挖掘的学生和运动因素对每个学生的成绩进行预测。在实际数据集上的大量实验表明,PAKP在不损失精度的情况下,具有很高的效率和可解释性优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Prerequisite Attention Model for Knowledge Proficiency Diagnosis of Students
With the rapid development of intelligent education platforms, how to enhance the performance of diagnosing students' knowledge proficiency has become an important issue, e.g., by incorporating the prerequisite relation of knowledge concepts. Unfortunately, the differentiated influence from different predecessor concepts to successor concepts is still underexplored in existing approaches. To this end, we propose a Prerequisite Attention model for Knowledge Proficiency diagnosis of students (PAKP) to learn the attentive weights of precursor concepts on successor concepts and model it for inferring the knowledge proficiency. Specifically, given the student response records and knowledge prerequisite graph, we design an embedding layer to output the representations of students, exercises, and concepts. Influence coefficient among concepts is calculated via an efficient attention mechanism in a fusion layer. Finally, the performance of each student is predicted based on the mined student and exercise factors. Extensive experiments on real-data sets demonstrate that PAKP exhibits great efficiency and interpretability advantages without accuracy loss.
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