Augmenting Knowledge Tracing by Considering Forgetting Behavior

Koki Nagatani, Qian Zhang, Masahiro Sato, Yan-Ying Chen, Francine Chen, T. Ohkuma
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引用次数: 115

Abstract

Computer-aided education systems are now seeking to provide each student with personalized materials based on a student's individual knowledge. To provide suitable learning materials, tracing each student's knowledge over a period of time is important. However, predicting each student's knowledge is difficult because students tend to forget. The forgetting behavior is mainly because of two reasons: the lag time from the previous interaction, and the number of past trials on a question. Although there are a few studies that consider forgetting while modeling a student's knowledge, some models consider only partial information about forgetting, whereas others consider multiple features about forgetting, ignoring a student's learning sequence. In this paper, we focus on modeling and predicting a student's knowledge by considering their forgetting behavior. We extend the deep knowledge tracing model [17], which is a state-of-the-art sequential model for knowledge tracing, to consider forgetting by incorporating multiple types of information related to forgetting. Experiments on knowledge tracing datasets show that our proposed model improves the predictive performance as compared to baselines. Moreover, we also examine that the combination of multiple types of information that affect the behavior of forgetting results in performance improvement.
考虑遗忘行为增强知识追踪
计算机辅助教育系统现在正在寻求根据学生的个人知识为每个学生提供个性化的材料。为了提供合适的学习材料,在一段时间内追踪每个学生的知识是很重要的。然而,预测每个学生的知识是困难的,因为学生往往会忘记。遗忘行为主要有两个原因:与之前互动的滞后时间,以及过去对一个问题的试验次数。虽然有一些研究在建模学生的知识时考虑了遗忘,但一些模型只考虑了关于遗忘的部分信息,而另一些模型考虑了关于遗忘的多个特征,忽略了学生的学习顺序。在本文中,我们主要通过考虑学生的遗忘行为来建模和预测学生的知识。我们扩展了深度知识追踪模型[17],该模型是一种最先进的知识追踪序列模型,通过整合与遗忘相关的多种类型的信息来考虑遗忘。在知识跟踪数据集上的实验表明,与基线相比,我们提出的模型提高了预测性能。此外,我们还研究了影响遗忘行为的多种类型信息的组合导致绩效改善。
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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