Structured Knowledge Tracing Models for Student Assessment on Coursera

Zhuo Wang, Jile Zhu, Xiang Li, Zhiting Hu, Ming Zhang
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引用次数: 28

Abstract

Massive Open Online Courses (MOOCs) provide an effective learning platform with various high-quality educational materials accessible to learners from all over the world. However, current MOOCs lack personalized learning guidance and intelligent assessment for individuals. Though a few recent attempts have been made to trace students' knowledge states by adapting the popular Bayesian Knowledge Tracing (BKT) model, they have largely ignored the rich structures and correlations among knowledge components (KCs) within a course. This paper proposes to model both the hierarchical and the temporal properties of the knowledge states in order to improve the modeling accuracy. Based on the content organization characteristics on the Coursera MOOC platform, we provide a well-defined KC model, and develop Multi-Grained-BKT and Historical-BKT to capture the above features effectively. Experiments on a Coursera course dataset show our approach significantly improves over previous vanilla BKT models on predicting students' quiz performance.
面向Coursera学生评估的结构化知识追踪模型
大规模在线开放课程(MOOCs)为世界各地的学习者提供了一个有效的学习平台,提供了各种高质量的教育材料。虽然最近有一些尝试通过采用流行的贝叶斯知识追踪(BKT)模型来追踪学生的知识状态,但他们在很大程度上忽略了课程中知识组件(KCs)之间的丰富结构和相关性。为了提高知识状态的建模精度,本文提出将知识状态的层次性和时态性同时建模。基于Coursera MOOC平台的内容组织特征,我们提供了一个定义良好的KC模型,并开发了multi - grain - bkt和history - bkt来有效地捕捉上述特征。在Coursera课程数据集上的实验表明,我们的方法在预测学生测验成绩方面比以前的香草BKT模型有了显著的改进。
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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